CN112950335B - Online trading platform for photo building sample pictures based on big data - Google Patents

Online trading platform for photo building sample pictures based on big data Download PDF

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CN112950335B
CN112950335B CN202110394184.4A CN202110394184A CN112950335B CN 112950335 B CN112950335 B CN 112950335B CN 202110394184 A CN202110394184 A CN 202110394184A CN 112950335 B CN112950335 B CN 112950335B
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CN112950335A (en
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董传宇
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Shandong Quanying Network Technology Co ltd
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q30/00Commerce
    • G06Q30/06Buying, selling or leasing transactions
    • G06Q30/0601Electronic shopping [e-shopping]
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q30/00Commerce
    • G06Q30/06Buying, selling or leasing transactions
    • G06Q30/0601Electronic shopping [e-shopping]
    • G06Q30/0621Item configuration or customization
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q30/00Commerce
    • G06Q30/06Buying, selling or leasing transactions
    • G06Q30/0601Electronic shopping [e-shopping]
    • G06Q30/0641Shopping interfaces

Abstract

The invention discloses an online transaction platform based on big data, in particular to an online transaction platform based on big data for photo floor samples, which comprises a buyer module, a seller module, an intention type pushing module, an intention sample selecting module and a sample disassembling and matching module, wherein the buyer module and the seller module are used for registering and registering information of buyers and sellers; the intention type pushing module pushes intention type samples according to the related operation of the buyer on the platform, and divides the photo building samples of the big data once, so that the selection range is reduced, and the efficiency is improved; the sample piece disassembling and matching module is used for matching the intention sample piece selected by the buyer with the form requirement, the difficulty degree of posture, the information of the buyer and the professional degree of a photographer subordinate to the seller to obtain a matching degree result, and the buyer and the seller can make a decision on whether to trade.

Description

Online trading platform for photo building sample pictures based on big data
Technical Field
The invention relates to the technical field of online trading platforms, in particular to a movie building sample film online trading platform based on big data.
Background
The phenomenon exists in the current trading process of the photo building sample, namely, a client is required to select a photo by visiting the gate, the client is not required to select the photo on line, the phenomenon is that the style is different due to the difference of style types, compositions, designs and clothes props of the photo building sample, the photo building party can only provide a scheme for the photo building sample according to some brief and abstract descriptions of the client, a model in the sample provided by the photo building terminal for the photo building sample often has superior physical conditions, professional postures and expressive force after professional training, and the photography techniques of photographers in the photo building are also different; at this time, the following two phenomena occur: one is as follows: the type scheme provided by the photo studio and the type desired by the customer in advance have errors due to understanding on communication, so that the photo studio and the customer can select the scoped area in a short time, and the situation cannot be avoided again if the photo studio sends all matching schemes to the customer for watching and then allows the customer to select the matching schemes, which inevitably reduces the operating efficiency of the photo studio and takes a long time for the customer, and the second step is as follows: the final effect graph of the movie building is different from the effect supposed by the buyer, namely the effect of the client is far from that of the sample, so that the phenomenon that the evaluation of the movie building is reduced after the buyer is dissatisfied with the emotion is caused, the buyer experiences poor purchasing experience, and the seller suffers credit loss.
Based on the above problems, it is urgently needed to provide a movie building sample online transaction platform based on big data, which intelligently defines region types according to browsing operations of buyers in the platform through an intention type pushing module and a sample disassembling and matching module, so that the time for the buyers to screen the intention types is reduced, the time loss caused by errors in communication understanding between two parties is reduced, and the efficiency of the two parties is improved; according to the sample piece disassembling and matching module, the sample piece is disassembled, meanwhile, the self demand and the self condition of the buyer are intelligently matched with the intention sample piece, the final customer effect is pre-judged in advance, the buyer makes a transaction decision based on the pre-judged result, the phenomenon that the buyer is unsatisfied is reduced, the number of times of cooperation of both parties is increased, and meanwhile the operation efficiency and the credit value of the studio party are increased.
Disclosure of Invention
The invention aims to provide a photo building sample film online transaction platform based on big data, so as to solve the problems in the background technology.
In order to solve the technical problems, the invention provides the following technical scheme:
a movie building sample online transaction platform based on big data comprises a buyer module, a seller module, an intention type pushing module, an intention sample selecting module and a sample disassembling and matching module; the buyer module and the seller module are used for inputting the information of the buyer and the seller to be stored into the platform for registration; the intention type pushing module is used for screening intention type plates of buyers for the photo and building sample plates of the big data; the intention sample selecting module is used for buyer to select intention in the gallery after the type plate screening of the big data photo building sample; and the sample disassembling and matching module is used for performing final matching on the buyer and the seller. After the buyers register and register respective information input platforms, the intention type pushing module pushes intention types to the buyers, the intention type photo floor samples are sent to the intention sample selecting module, the buyers select final intention samples in the intention sample selecting module, the intention sample selecting module sends the intention samples finally selected by the buyers to the sample disassembling and matching module for final sample disassembling and matching, and the sample disassembling and matching module feeds back the final matching value to the buyers and the sellers as a reference for the two parties to determine whether to cooperate or not.
Further, the specific working process of the intention type pushing module comprises the following steps: collecting browsing time mark T of certain type of photo building sample oi Clicking amplification of a certain type of photo building sampleThe number of times is marked M oi And the click times of the photo building sample film of a certain type are marked as K oi According to the formula:
Figure BDA0003017943440000021
wherein y is 1 、y 2 、y 3 、y 4 、x 1 、x 2 、x 3 、x 4 Is a correlation coefficient, H oi The buyer attention value, oi = {1,2,3 \8230 } of the photo building sample type of the first type, and the intelligent pushing module pushes H of the photo building sample of different types oi Feeding values back to the platform end and the seller end; will H oi The first three values are labeled as strong attention values V oi The oi = {1,2,3} platform end and the seller end push related types of photo building samples to the buyer according to the strong attention value of the buyer, and the buyer performs intention selection; h of photo building sample pictures of different types is pushed by intention type pushing module oi The value is fed back to the platform end and the seller end, the process is beneficial to finding potential interest and hobbies of the buyer, the hobbies and requirements of the buyer can be more accurately positioned, and the respective operation efficiency of the buyer and the seller is improved.
The method for collecting the browsing time of a certain type of photo building sample pictures comprises the following specific working processes: the method comprises the steps of presetting a period of acquisition time, classifying the types of samples browsed in the period of time to obtain the average browsing time of the samples of different types
Figure BDA0003017943440000022
mi is the type of the photo floor swatches of the mi type, and mi = {1,2,3 \8230 };
Figure BDA0003017943440000023
respectively representing the average browsing time of the buyer to the first type, the second type and the third type of photo building samples; when the browsing time of a certain type of photo building sample exceeds the average browsing time of the photo building sample, the abnormal browsing time is recorded as the abnormal browsing condition of the photo building sample, and the abnormal browsing time is stored and markedRecording the abnormal times, averaging and storing the abnormal browsing time of the type of photo building sample when the abnormal times exceed a preset value, and covering the average browsing time of the original type of photo building sample by the average value of the abnormal browsing time of the stored certain type of photo building sample; when the times of abnormal browsing time does not reach a preset value, discarding the data; the collecting process is beneficial to eliminating the situation that a buyer stays in a sample page in the browsing process but does not actually look up the sample in an interest mode, and the obtained related browsing time is more targeted, so that the intelligent pushing result is more accurate.
The method for collecting the click amplification times of a certain type of photo building sample comprises the following specific processes: includes collecting times of conventional amplification marked as d, times of amplification exceeding common amplification d h According to the formula:
M=d×B I +d h ×B H
m represents the number of clicks on a type of photo floor swatch by a buyer, where B I 、B H Is a preset percentage value and satisfies B I <B H (ii) a The acquisition process can enable the acquired click amplification times to be more closely related to the interest degree of the buyer in the type of sample.
The method for collecting the click times of a certain type of photo building sample pictures comprises the following specific working processes: the method comprises the steps of collecting the times of clicking a certain type of photo building sample once, marking as i, reversing to repeatedly click the type of photo building sample, marking as f, and collecting the times of n; setting a weight A for the times of clicking a certain type of photo building sample once, setting a weight B for the times of repeatedly clicking the type of photo building sample backwards and setting a weight C for the times of collecting the type of photo building sample, according to the formula:
k = A × i + B × f + C × nk represents the number of clicks of a certain type of photo floor swatch by a buyer, and A =<B<C, the collection process enables the final buyer to pay attention to value H oi And more accurate.
Further, the specific working process of the sample wafer disassembling and matching module comprises: when in useThe platform locks the intention sample of the buyer, and the sample is analyzed in a disassembling proportion, and the data obtained by the main analysis has a body shape requirement proportion coefficient g of the sample model 1 Fraction g of difficulty of sample posture 2 And the corresponding difficulty degree demand score S, storing the data in a sample disassembling and matching module, simultaneously extracting the height, weight, shoulder width, three-dimensional and other sizes provided when the buyer side registers information, performing score judgment with an intention sample in the module according to a preset certain shape difference standard to obtain a buyer shape matching score Q, obtaining the professional value E of a photographer according to the transfer rate, the good rate and the order taking rate of previous sample works of the information of the subordinate photographers which can be provided by each photo building party, and performing fitting and matching to obtain the final matching degree R according to a formula:
R=Q×g 1 +S+E
and transmitting the data to the buyer and the seller to be used as a reference basis for whether the buyer and the seller select the transaction.
Figure requirement proportion coefficient g of sample model 1 The specific process of obtaining comprises: adding image processing software into the sample disassembling and matching module, extracting square pixels of areas with different attributes in the sample, and determining the figure shape requirement proportion coefficient g by the proportion of figures 1
Ratio coefficient g of sample posture difficulty 2 The specific process of confirmation of (2) includes: the method comprises the steps of pre-storing and importing a human body conventional action image in a module, extracting characters in a sample when an intention sample is locked, comparing the characters with the pre-stored image to coincide, calculating the cosine similarity of an included angle of a limb part which does not coincide according to a rectangular coordinate system of an area part, respectively making a side a and a side b of a triangle of a limb of a conventional action and a limb of the intention sample, forming a triangle with the included angle theta, and according to a formula:
cosθ=(a^2+b^2+c^2)/(2*a*b)
the cosine value cos theta of the included angle is used as a difficulty degree confirmation standard of the sample posture, when cos theta is greater than 0, the more similar the description is, namely the difficulty is smaller, when cos theta is less than 0, the more dissimilar the description is, namely the difficulty is larger, the value of cos theta is used as an interval distribution, a score judgment standard is given to the value of cos theta, a score S is obtained according to the confirmation of the difficulty degree, the matching process is favorable for realizing an intelligent matching process, the final guest effect is pre-judged in advance, and a buyer is allowed to make a transaction decision based on a pre-judgment result.
Compared with the prior art, the invention has the following beneficial effects: according to the method, the area types are intelligently defined according to the browsing operation of the buyer in the platform through the intention type pushing module, the time for the buyer to screen the intention types is reduced, the time loss caused by errors in communication understanding of the two parties is reduced, the intelligent pushing is more accurate and efficient, and the efficiency of the two parties is improved; according to the sample piece disassembling and matching module, the sample piece is disassembled, meanwhile, the requirements and conditions of the buyer are intelligently matched with the intention sample piece, the final client piece effect is prejudged in advance, the buyer can make a transaction decision based on a prejudgment result, the phenomenon that the buyer is dissatisfied is reduced, the satisfaction of both sides of the buyer and the seller is improved, and meanwhile, the operation efficiency and the credit value of the movie building side are improved.
Drawings
The accompanying drawings, which are included to provide a further understanding of the invention and are incorporated in and constitute a part of this specification, illustrate embodiments of the invention and together with the description serve to explain the principles of the invention and not to limit the invention. In the drawings:
FIG. 1 is a system diagram of a big data-based photo studio film online transaction platform according to the present invention;
FIG. 2 is a diagram of steps of a method for collecting browsing time of a certain type of photo building swatches in an online trading platform based on big data according to the present invention;
FIG. 3 is a diagram of the steps of the method for collecting the number of times of click amplification of a certain type of photo building samples in the big data based photo building sample online transaction platform according to the present invention;
FIG. 4 is a diagram of the method steps for collecting the number of clicks of a certain type of photo building swatch in the big data based photo building swatch online transaction platform according to the present invention;
FIG. 5 is a concrete work flow of a sample disassembling and matching module of the online trading platform for photo building samples based on big data according to the present invention;
FIG. 6 shows the figure requirement proportion coefficient g of the model collected in the sample of the online trading platform for photo building sample based on big data 1 A diagram of method steps of;
FIG. 7 is a ratio coefficient g of sample posture difficulty in the sample of the online trading platform for photo building samples based on big data according to the present invention 2 And their scores;
Detailed Description
The technical solutions in the embodiments of the present invention will be clearly and completely described below with reference to the drawings in the embodiments of the present invention, and it is obvious that the described embodiments are only a part of the embodiments of the present invention, and not all of the embodiments. All other embodiments, which can be derived by a person skilled in the art from the embodiments given herein without making any creative effort, shall fall within the protection scope of the present invention.
Referring to fig. 1-7, the present invention provides the following technical solutions:
a movie building sample online transaction platform based on big data comprises a buyer module, a seller module, an intention type pushing module, an intention sample selection module and a sample disassembling and matching module, wherein the buyer module and the seller module are used for inputting information of a buyer and a seller to be stored into the platform for registration; the intention type pushing module is used for screening intention type plates of buyers for the photo building sample plates with big data; the intention sample selecting module is used for buyer to select intention in the gallery after the type plate screening of the big data photo building sample; the sample disassembling and matching module is used for carrying out final matching on the buyer and the seller. After the buyers register and register respective information input platforms, an intention type pushing module pushes intention types to the buyers, intention type photo floor samples are sent to the intention sample selecting module, the buyers select final intention samples in the intention sample selecting module, the intention sample selecting module sends the intention samples finally selected by the buyers to the sample disassembling and matching module for final sample disassembling and matching, and the sample disassembling and matching module feeds back final matching values of the intention samples to the buyers and the sellers as references for the two parties to determine whether to cooperate or not.
The specific working process of the intention type pushing module is as follows:
collecting browsing time mark T of certain type of photo building sample oi
The number of times of click amplification for collecting a certain type of photo studio samples is marked as M oi
The click times for collecting the photo building sample is marked as K oi
According to the formula:
Figure BDA0003017943440000061
obtaining buyer attention value H for a certain type of photo studio prints oi
H of photo building sample pictures of different types is pushed by intention type pushing module oi Feeding values back to the platform end and the seller end; the process is beneficial to discovering the potential interests and hobbies of the buyers, can more accurately position the hobbies and requirements of the buyers, and improves the respective operating efficiency of the buyers and the sellers.
The specific process of the method for collecting the browsing time of the photo building sample film of a certain type is as follows:
presetting a period of acquisition time, and classifying the types of the samples browsed in the period of time;
obtaining average browsing time of different types of samples
Figure BDA0003017943440000062
mi is the type of mi type of shadowgraph swatch, mi = {1,2,3 \8230; },/, or>
Figure BDA0003017943440000063
Representing the average browsing time of the first type of photo floor swatches;
when the browsing time of a certain type of photo studio prints exceeds the average browsing time of the type of photo studio prints, namely abnormal browsing time W>Average browsing time T mi Recording the abnormal browsing condition of the photo building sample film of the type, and browsing the photo building sample film differentlyStoring and marking at regular time the number of times of abnormality thereof occurs;
when the abnormal times exceed 5 times, the average value of the abnormal browsing time W of the type of photo building sample is marked as P mi And storing, namely, covering the average browsing time of the original type of photo building sample by the stored average value of the browsing abnormal time of the type of photo building sample, namely T mi =P mi
When the frequency of abnormal browsing time does not reach 5 times, discarding the previously stored abnormal browsing time W; the collecting process is beneficial to eliminating the situation that a buyer stays in a sample page in the browsing process but does not actually look up the sample in an interest mode, and the obtained related browsing time is more targeted, so that the intelligent pushing result is more accurate.
The specific process of the method for collecting the click amplification times of a certain type of photo studio prints is as follows:
collecting the times of conventional amplification and marking as d;
number of times d for which the acquisition magnification exceeds the normal magnification h
According to the formula:
M=d×B I +d h ×B H
obtaining the click amplification times of a certain type of photo building sample, wherein B I 、B H Is a preset percentage value and satisfies B I <B H (ii) a The acquisition process can enable the acquired click amplification times to be more closely related to the interest degree of the buyer in the type of sample.
The specific working process of the method for collecting the sample click times of a certain type of photo studio samples is as follows:
collecting the times of clicking a certain type of photo building sample film at a time and marking as i;
collecting the times of repeatedly clicking the photo building sample film in a reverse mode and marking as f;
the times of collecting the photo building sample pictures of the type are marked as n;
setting a weight A for the times of clicking a certain type of photo building sample once, setting a weight B for the times of repeatedly clicking the photo building sample backwards, setting a weight C for the times of collecting the photo building sample of the type, wherein A < B < C,
according to the formula:
K=A×i+B×f+C×n
obtaining the sample click times K of a certain type of photo building sample; this collection process enables the final buyer to focus on value H oi And more accurate.
The specific working process of the sample wafer disassembling and matching module is as follows:
the buyer selects an intention sample in the intention sample selection module;
the sample piece disassembling matching module carries out a disassembling proportion analysis on the sample piece, and the data obtained by the main analysis has a body shape requirement proportion coefficient g of the sample piece model 1 Sample posture fraction g of difficulty 2 The corresponding gesture difficulty degree demand score S is stored in a sample wafer disassembling and matching module;
extracting all sizes of height, weight, shoulder width, three-dimension and the like provided when the buyer side registration information is extracted, and performing score evaluation with the intention sample in the module according to a certain shape difference standard set in advance to obtain a buyer shape matching score Q;
obtaining the professional degree value E of a photographer according to the reprinting rate, the good evaluation rate and the order taking rate of the original sample works of the information of subordinate photographers which can be provided by each studio, carrying out fitting matching to obtain the final matching degree R according to a formula:
R=Q×g 1 +S+E
and transmitting the data value R to the buyer and the seller, and using the data value R as a reference for whether the buyer and the seller select the transaction according to the height of the data value R.
Figure requirement proportion coefficient g of sample model 1 The specific process of obtaining is as follows:
the sample disassembling and matching module comprises image processing software and is used for extracting square pixels of areas with different attributes in the sample;
determining figure shape requirement proportion coefficient g by the proportion of figure in sample picture 1
Ratio coefficient g of sample posture difficulty 2 The specific process of (2) is as follows:
pre-storing and importing a human body conventional action image in a sample disassembling and matching module;
when the intention sample sheet is locked, the characters in the sample sheet are extracted and compared with the pre-stored image to be superposed, a rectangular coordinate system of the limb part which is not superposed at the region part is established to carry out the calculation of the cosine similarity of the included angle, and the limb of the conventional action and the limb of the intention sample sheet are respectively taken as the sides of the triangle
Figure BDA0003017943440000081
And side->
Figure BDA0003017943440000082
The included angle between the two is theta to form a triangle;
according to the formula:
Figure BDA0003017943440000083
obtaining a cosine value cos theta of an included angle, wherein the value range of the cosine value cos theta is [ -1,1], the cosine value cos theta is used as a difficulty level confirmation standard of the sample posture, when cos theta is greater than 0, the description is more similar, namely the difficulty level is smaller, and when cos theta is less than 0, the description is more dissimilar, namely the difficulty level is larger;
taking the value range of cos theta as equal-difference interval distribution, assigning a score evaluation standard to each interval, for example, assigning the interval < -1 > -0.5] with a score 60, assigning the interval < -0.5 > -0 ] with a score 70, and so on, and obtaining a corresponding assigned score S according to the interval where the cos theta is located.
Compared with the prior art, the invention has the following beneficial effects: according to the method, the area types are intelligently defined according to the browsing operation of the buyer in the platform through the intention type pushing module, the time for the buyer to screen the intention types is reduced, the time loss caused by errors in communication understanding of the two parties is reduced, the intelligent pushing is more accurate and efficient, and the efficiency of the two parties is improved; according to the sample piece disassembling and matching module, the sample piece is disassembled, meanwhile, the demands and the conditions of the buyer are intelligently matched with the intention sample piece, the final customer effect is pre-judged in advance, the buyer can make a transaction decision based on the pre-judged result, the phenomenon that the buyer is dissatisfied is reduced, the satisfaction degrees of both sides of the buyer and the seller are improved, and the operation efficiency and the credit value of the studio are improved.
It is noted that, herein, relational terms such as first and second, and the like may be used solely to distinguish one entity or action from another entity or action without necessarily requiring or implying any actual such relationship or order between such entities or actions. Also, the terms "comprises," "comprising," or any other variation thereof, are intended to cover a non-exclusive inclusion, such that a process, method, article, or apparatus that comprises a list of elements does not include only those elements but may include other elements not expressly listed or inherent to such process, method, article, or apparatus.
Finally, it should be noted that: although the present invention has been described in detail with reference to the foregoing embodiments, it will be apparent to those skilled in the art that modifications may be made to the embodiments described above, or equivalents may be substituted for elements thereof. Any modification, equivalent replacement, or improvement made within the spirit and principle of the present invention should be included in the protection scope of the present invention.

Claims (7)

1. The utility model provides a building sample piece online transaction platform based on big data which characterized in that: the system comprises a buyer module, a seller module, an intention type pushing module, an intention sample selecting module and a sample disassembling and matching module:
the buyer module is used for inputting personal information of a buyer for registering, registering and sending to the platform for storage;
the seller module is used for inputting relevant information of a seller, registering and registering the information of the past works of subordinate photographers including a movie building, and sending the information to the platform for storage;
the intention type pushing module is used for screening intention type plates of buyers for the photo building sample pieces with big data;
the specific working process of the intention type pushing module comprises the following steps: collecting average browsing time mark T of certain type of photo building sample oi The number of times of clicking a certain type of photo building sample is marked as M oi And the click times of the photo building samples of a certain type are marked as K oi According to the formula:
Figure FDA0003837762710000011
wherein y is 1 、y 2 、y 3 、y 4 、x 1 、x 2 、x 3 、x 4 Is a correlation coefficient, H oi A buyer's interest value, oi = {1,2,3 \8230 } for a photo dailies type represented as the first oi type, which the intent type push module will push H for different types of photo dailies oi Feeding values back to the platform end and the seller end; h is to be oi The first three values are labeled as strong attention values V oi The oi = {1,2,3} platform end and the seller end push related types of photo building samples to the buyer according to the strong attention value of the buyer, and the buyer performs intention selection;
the intention sample selecting module is used for buyer to select intention in the gallery after the big data photo building sample is subjected to type plate screening;
and the sample disassembling and matching module is used for performing final matching on the buyer and the seller.
2. The big-data-based photo building sample film online transaction platform as claimed in claim 1, wherein: the method for collecting the browsing time of the photo building sample pictures of a certain type comprises the following specific working processes: the method comprises the steps of presetting a period of acquisition time, classifying the types of samples browsed in the period of time to obtain the average browsing time of the samples of different types
Figure FDA0003837762710000012
mi is the type of the mi type of the photo studio prints, mi = {1,2,3 \8230 };
Figure FDA0003837762710000013
respectively representing the average browsing time of the buyer to the first type, the second type and the third type of photo building samples; when the browsing time of a certain type of photo building sample exceeds the average browsing time of the type of photo building sample, recording the browsing abnormal situation of the type of photo building sample as the browsing abnormal situation of the type of photo building sample, storing the browsing abnormal time of the photo building sample and marking the abnormal times of the photo building sample, when the abnormal times exceed a preset value, averaging and storing the abnormal browsing time of the type of photo building sample, and covering the average browsing time of the original type of photo building sample by the average value of the stored browsing abnormal time of the certain type of photo building sample; and when the times of abnormal browsing time does not reach a preset value, discarding the data.
3. The big-data-based on-line trading platform for photo building samples according to claim 1, wherein: the method for collecting the click amplification times of a certain type of photo building sample pictures comprises the following specific processes: includes collecting times of conventional amplification marked as d, times of amplification exceeding common amplification d h According to the formula:
M=d×B I +d h ×B H
m represents the number of clicks on a type of photo floor swatch by a buyer, where B I 、B H Is a preset percentage value and satisfies B I <B H
4. The big-data-based on-line trading platform for photo building samples according to claim 1, wherein: the method for collecting the click times of the photo building samples of a certain type comprises the following specific working processes: collecting the times of clicking a certain type of photo building sample at a time, marking as i, reversing to repeatedly click the type of photo building sample, marking as f, and collecting the times of the type of photo building sample n; setting a weight A for the times of clicking a certain type of photo building sample at a single time, setting a weight B for the times of repeatedly clicking the type of photo building sample in a rewinding manner, and setting a weight C for the times of collecting the type of photo building sample according to a formula:
K=A×i+B×f+C×n
k is expressed as the number of clicks of the buyer on a certain type of photo floor swatch, and A < B < C.
5. The big-data-based on-line trading platform for photo building samples according to claim 1, wherein: matching module is disassembled to sample, its concrete working process: includes locking the buyer's intention sample on the platform, carrying out a disassembly ratio analysis on the sample, and obtaining the data with the figure requirement ratio coefficient g of the sample model 1 The ratio coefficient g of the sample posture difficulty 2 And the corresponding difficulty degree demand score S is stored in a sample disassembling and matching module, the height, the weight, the shoulder width and the three-dimensional information provided when the information is registered at the buyer side are extracted, score judgment is carried out on the data and the intention sample in the module according to a certain shape difference standard set in advance to obtain a buyer shape matching score Q, the professional value E of a photographer is obtained according to the reprinting rate, the good appraisal rate and the order taking rate of the past sample works which can be provided by each studio side, and fitting matching is carried out to obtain the final matching degree R according to a formula:
R=Q×g 1 +S+E
and transmitting the data to the buyer and the seller as a reference basis for whether the buyer and the seller select the transaction.
6. The big-data-based photo building sample film online transaction platform according to claim 5, wherein: the figure requirement proportion coefficient g of the sample model 1 The specific process of obtaining comprises: adding image processing software into the sample disassembling and matching module, extracting square pixels of areas with different attributes in the sample, and determining the figure shape requirement proportion coefficient g by the proportion of figures 1
7. The big-data-based photo building sample film online transaction platform according to claim 5, wherein: the proportion coefficient g of the sample posture difficulty degree 2 The specific process of (1) is as follows: the method comprises the steps of pre-storing and importing a human body conventional action image in a module, extracting characters in a sample when the intention sample is locked, comparing the characters with the pre-stored image for coincidence, calculating the cosine similarity of an included angle of a limb part without coincidence according to a rectangular coordinate system of an area part, respectively making a limb of a conventional action and a limb of the intention sample as a side a and a side b of a triangle, forming the triangle with the included angle theta, and according to a formula:
cosθ=(a^2+b^2-c^2)/(2*a*b)
the cosine value cos theta of the included angle is used as a difficulty level confirmation standard of the sample posture, when cos theta is larger than 0, the more similar the description is, that is, the difficulty level is smaller, when cos theta is smaller than 0, the more dissimilar the description is, that is, the difficulty level is larger, the value of cos theta is used as a section distribution, a score judgment standard is given to the section distribution, and the score S is obtained according to the difficulty level confirmation.
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