EP1343145A1 - System und Verfahren zur Messung der Qualität eines Übertragungssystems - Google Patents

System und Verfahren zur Messung der Qualität eines Übertragungssystems Download PDF

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EP1343145A1
EP1343145A1 EP02075973A EP02075973A EP1343145A1 EP 1343145 A1 EP1343145 A1 EP 1343145A1 EP 02075973 A EP02075973 A EP 02075973A EP 02075973 A EP02075973 A EP 02075973A EP 1343145 A1 EP1343145 A1 EP 1343145A1
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Prior art keywords
equal
signal
ratio
input signal
value
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French (fr)
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John Gerard Beerends
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Koninklijke KPN NV
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Koninklijke KPN NV
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Priority to EP02075973A priority Critical patent/EP1343145A1/de
Priority to DE60308336T priority patent/DE60308336T2/de
Priority to AU2003212285A priority patent/AU2003212285A1/en
Priority to EP03708155A priority patent/EP1485691B1/de
Priority to DK03708155T priority patent/DK1485691T3/da
Priority to ES03708155T priority patent/ES2272952T3/es
Priority to US10/504,619 priority patent/US7689406B2/en
Priority to PCT/EP2003/002058 priority patent/WO2003076889A1/en
Priority to JP2003575064A priority patent/JP4263620B2/ja
Priority to AT03708155T priority patent/ATE339676T1/de
Publication of EP1343145A1 publication Critical patent/EP1343145A1/de
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    • GPHYSICS
    • G10MUSICAL INSTRUMENTS; ACOUSTICS
    • G10LSPEECH ANALYSIS TECHNIQUES OR SPEECH SYNTHESIS; SPEECH RECOGNITION; SPEECH OR VOICE PROCESSING TECHNIQUES; SPEECH OR AUDIO CODING OR DECODING
    • G10L25/00Speech or voice analysis techniques not restricted to a single one of groups G10L15/00 - G10L21/00
    • G10L25/48Speech or voice analysis techniques not restricted to a single one of groups G10L15/00 - G10L21/00 specially adapted for particular use
    • G10L25/69Speech or voice analysis techniques not restricted to a single one of groups G10L15/00 - G10L21/00 specially adapted for particular use for evaluating synthetic or decoded voice signals

Definitions

  • the invention refers to a method and a system for measuring the transmission quality of a system under test, an input signal entered into the system under test and an output signal resulting from the system under test being processed and mutually compared.
  • the methods and systems known from Recommendation P.862 have the disadvantage that they do not compensate for differences in power level on a frame by frame basis correctly. These differences are caused by gain variations or noise in the input signal. The incorrect compensation leads to low correlations between subjective and objective scores, especially when the original reference input speech signal contains low levels of noise.
  • improvements are achieved by applying a first scaling step in a pre-processing stage with a first scaling factor which is a function of the reciprocal value of the power of the output signal increased by an adjustment value.
  • a second scaling step is applied with a second scaling factor which is substantially equal to the first scaling factor raised to an exponent having a adjustment value between zero and one.
  • the second scaling step may be carried out on various locations in the device, while the adjustment values are adjusted using test signals with well defined subjective quality scores.
  • the output signal and/or the input signal of a system are scaled, in a way that small deviations of the power are compensated, while larger deviations are compensated partially in a manner that is dependent on the power ratio.
  • an artificial reference speech signal may be created, for which the noise levels as present in the original input speech signal are lowered by a scaling factor that depends on the local level of the noise in this input.
  • the result of the inventive measures is a more correct prediction of the subjectively perceived end-to-end speech quality for speech signals which contain variations in the local scaling, especially in the case where soft speech parts and silences are degraded by low levels of noise.
  • the compensation used in Recommendation P.862 to correct for local gain changes in the output signal is improved by scaling the output (or the input) in such way that small deviations of the power are compensated (preferably per time frame or period) while larger deviations are compensated partially, dependent on the power ratio.
  • the local scaling in the present invention is equivalent to the scaling as given in the prior-art documents Recommendation P.862 and EP01200945 as long as m ⁇ F ⁇ M.
  • F ⁇ m or F > M the scaling is progressively deviating less from 1.0 then the scaling as given in the prior-art.
  • the softscale factor S is used in the same way F is used in the prior-art methods and systems to compensate the output power in each frame locally.
  • the compensation used is focussed on low level parts of the input signal.
  • a transparent speech transport system When the input signal (reference signal) contains low levels of noise, a transparent speech transport system will give an output speech signal that also contains low levels of noise. The output of the speech transport system is then judged of having lower quality then expected on the basis of the noise introduced by the transport system.
  • the input reference is not presented to the testing subject and consequently the subject judges low noise level differences in the input signal as differences in quality of the speech transport system. In order to have high correlations, in objective test systems, with such subjective tests, this effect has to be emulated in an advanced objective speech quality assessment algorithm.
  • the present preferred option of the invention emulates this by effectively creating a new, virtual, artificial reference speech signal in the power representation domain for which the noise power levels are lowered by a scaling factor that depends on the local level of the noise in the input signal.
  • the newly created artificial reference signal converges to zero faster than the original input signal for low levels of this input signal.
  • the difference calculation in the internal representation loudness domain is carried out after scaling of the input loudness signal to a level that goes to zero faster than the loudness of the input signal as it approaches zero.
  • the processing implies mapping of the (degraded) output signal (Y(t)) and the reference signal (X(t)) on representation signals LY and LX according to a psycho-physical perception model of the human auditory system.
  • a differential or disturbance signal (D) is determined by "differentiating means" from those representation signals, which disturbance signal is then processed by modelling means in accordance with a cognitive model, in which certain properties of human testees have been modelled, in order to obtain the quality signal Q.
  • the difference calculation in the internal representation loudness domain is, within the scope of the present invention, preferably carried out after scaling the input loudness signal to a level that goes to zero faster than the loudness of the input signal as it approaches zero.
  • K represents the low level noise power criterion per time frequency cell, dependent on the specific implementation.
  • K' represents the low level noise power criterion per time frame which is dependent on the specific implementation.
  • the PESQ system shown in figure 1 compares an original signal (input signal) X(t) with a degraded signal (output signal) Y(t) that is the result of passing X(t) through e.g. a communication system.
  • the output of the PESQ system is a prediction of the perceived quality that would be given to Y(t) by subjects in a subjective listening test.
  • a series of delays between original input and degraded output are computed, one for each time interval for which the delay is significantly different from the previous time interval. For each of these intervals a corresponding start and stop point is calculated.
  • the alignment algorithm is based on the principle of comparing the confidence of having two delays in a certain time interval with the confidence of having a single delay for that interval. The algorithm can handle delay changes both during silences and during active speech parts.
  • the PESQ system compares the original (input) signal with the aligned degraded output of the device under test using a perceptual model.
  • the key to this process is transformation of both the original and the degraded signals to internal representations (LX, LY), analogous to the psychophysical representation of audio signals in the human auditory system, taking account of perceptual frequency (Bark) and loudness (Sone). This is achieved in several stages: time alignment, level alignment to a calibrated listening level, time-frequency mapping, frequency warping, and compressive loudness scaling.
  • the internal representation is processed to take account of effects such as local gain variations and linear filtering that may - if they are not too severe - have little perceptual significance. This is achieved by limiting the amount of compensation and making the compensation lag behind the effect. Thus minor, steady-state differences between original and degraded are compensated. More severe effects, or rapid variations, are only partially compensated so that a residual effect remains and contributes to the overall perceptual disturbance. This allows a small number of quality indicators to be used to model all subjective effects.
  • MOS Mean Opinion Score
  • the perceptual model of a PESQ system is used to calculate a distance between the original and degraded speech signal ("PESQ score"). This may be passed through a monotonic function to obtain a prediction of a subjective MOS for a given subjective test.
  • PESQ score is mapped to a MOS-like scale, a single number in the range of -0.5 to 4.5, although for most cases the output range will be between 1.0 and 4.5, the normal range of MOS values found in an ACR listening quality experiment.
  • the time signals are mapped to the time frequency domain using a short term FFT (Fast Fourier Transformation) with a Hann window of size 32 ms. For 8 kHz this amounts to 256 samples per window and for 16 kHz the window counts 512 samples while adjacent frames are overlapped by 50%.
  • FFT Fast Fourier Transformation
  • the absolute hearing threshold P 0 (f) is interpolated to get the values at the center of the Bark bands that are used. These values are stored in an array and are used in Zwicker's loudness formula.
  • This constant is computed from a sine wave of a frequency of 1 000 Hz with an amplitude at 29.54 (40 dB SPL) transformed to the frequency domain using the windowed FFT over 32 ms.
  • the (discrete) frequency axis is then converted to a modified Bark scale by binning of FFT bands.
  • the peak amplitude of the spectrum binned to the Bark frequency scale (called the "pitch power density") must then be 10 000 (40 dB SPL). The latter is enforced by a postmultiplication with a constant, the power scaling factor S P .
  • the same 40 dB SPL reference tone is used to calibrate the psychoacoustic (Sone) loudness scale.
  • the intensity axis is warped to a loudness scale using Zwicker's law, based on the absolute hearing threshold.
  • the integral of the loudness density over the Bark frequency scale, using a calibration tone at 1 000 Hz and 40 dB SPL, must then yield a value of 1 Sone. The latter is enforced by a postmultiplication with a constant, the loudness scaling factor S 1 .
  • the human ear performs a time-frequency transformation.
  • this is implemented by a short term FFT with a window size of 32 ms.
  • the overlap between successive time windows (frames) is 50 per cent.
  • the power spectra - the sum of the squared real and squared imaginary parts of the complex FFT components - are stored in separate real valued arrays for the original and degraded signals.
  • Phase information within a single Hann window is discarded in the PESQ system and all calculations are based on only the power representations PX WIRSS (f) n and PY WIRSS (f) n .
  • the start points of the windows in the degraded signal are shifted over the delay.
  • the time axis of the original speech signal is left as is. If the delay increases, parts of the degraded signal are omitted from the processing, while for decreases in the delay parts are repeated.
  • the Bark scale reflects that at low frequencies, the human hearing system has a finer frequency resolution than at high frequencies. This is implemented by binning FFT bands and summing the corresponding powers of the FFT bands with a normalization of the summed parts.
  • the warping function that maps the frequency scale in Hertz to the pitch scale in Bark does not exactly follow the values given in the literature.
  • the resulting signals are known as the pitch power densities PPX WIRSS (f) n and PPY WIRSS (f) n .
  • the power spectrum of the original and degraded pitch power densities are averaged over time. This average is calculated over speech active frames only using time-frequency cells whose power is more than 1 000 times the absolute hearing threshold.
  • a partial compensation factor is calculated from the ratio of the degraded spectrum to the original spectrum. The maximum compensation is never more than 20 dB.
  • the original pitch power density PPX WIRSS (f) n of each frame n is then multiplied with this partial compensation factor to equalize the original to the degraded signal. This results in an inversely filtered original pitch power density PPX' WIRSS (f) n .
  • This partial compensation is used because severe filtering can be disturbing to the listener. The compensation is carried out on the original signal because the degraded signal is the one that is judged by the subjects in an ACR experiment.
  • Short-term gain variations are partially compensated by processing the pitch power densities frame by frame.
  • the sum in each frame n of all values that exceed the absolute hearing threshold is computed.
  • the ratio of the power in the original and the degraded files is calculated and bounded to the range [3 ⁇ 10 -4 , 5].
  • a first order low pass filter (along the time axis) is applied to this ratio.
  • the distorted pitch power density in each frame, n is then multiplied by this ratio, resulting in the partially gain compensated distorted pitch power density PPY' WIRSS (f) n .
  • the signed difference between the distorted and original loudness density is computed. When this difference is positive, components such as noise have been added. When this difference is negative, components have been omitted from the original signal. This difference array is called the raw disturbance density.
  • the minimum of the original and degraded loudness density is computed for each time frequency cell. These minima are multiplied by 0.25.
  • the corresponding two-dimensional array is called the mask array. The following rules are applied in each time-frequency cell:
  • the net effect is that the raw disturbance densities are pulled towards zero. This represents a dead zone before an actual time frequency cell is perceived as distorted. This models the process of small differences being inaudible in the presence of loud signals (masking) in each time-frequency cell.
  • the result is a disturbance density as a function of time (window number n) and frequency, D(f) n .
  • the asymmetry effect is caused by the fact that when a codec distorts the input signal it will in general be very difficult to introduce a new time-frequency component that integrates with the input signal, and the resulting output signal will thus be decomposed into two different percepts, the input signal and the distortion, leading to clearly audible distortion [2].
  • the codec leaves out a time-frequency component the resulting output signal cannot be decomposed in the same way and the distortion is less objectionable.
  • This effect is modelled by calculating an asymmetrical disturbance density DA(f) n per frame by multiplication of the disturbance density D(f) n with an asymmetry factor.
  • This asymmetry factor equals the ratio of the distorted and original pitch power densities raised to the power of 1.2. If the asymmetry factor is less than 3 it is set to zero. If it exceeds 12 it is clipped at that value. Thus only those time frequency cells remain, as non-zero values, for which the degraded pitch power density exceeded the original pitch power density.
  • the disturbance density D(f) n and asymmetrical disturbance density DA(f) n are integrated (summed) along the frequency axis using two different Lp norms and a weighting on soft frames (having low loudness): with M n a multiplication factor, 1 / (power of original frame plus a constant) 0 ⁇ 04 , resulting in an emphasis of the disturbances that occur during silences in the original speech fragment, and W f a series of constants proportional to the width of the modified Bark bins. After this multiplication the frame disturbance values are limited to a maximum of 45. These aggregated values, D n and DA n , are called frame disturbances.
  • the repeat strategy as mentioned in 10.2.4 is modified. It was found to be better to ignore the frame disturbances during such events in the computation of the objective speech quality. As a consequence frame disturbances are zeroed when this occurs. The resulting frame disturbances are called D' n and DA' n .
  • Consecutive frames with a frame disturbance above a threshold are called bad intervals.
  • the objective measure predicts large distortions over a minimum number of bad frames due to incorrect time delays observed by the preprocessing.
  • bad intervals a new delay value is estimated by maximizing the cross correlation between the absolute original signal and absolute degraded signal adjusted according to the delays observed by the preprocessing.
  • the maximimal cross correlation is below a threshold, it is concluded that the interval is matching noise against noise and the interval is no longer called bad, and the processing for that interval is halted. Otherwise, the frame disturbance for the frames during the bad intervals is recomputed and, if it is smaller replaces the original frame disturbance. The result is the final frame disturbances D"n and DA'' n that are used to calculate the perceived quality.
  • the frame disturbance values and the asymmetrical frame disturbance values are aggregated over split second intervals of 20 frames (accounting for the overlap of frames: approx. 320 ms) using L 6 norms, a higher p value as in the aggregation over the speech file length. These intervals also overlap 50 per cent and no window function is used.
  • the split second disturbance values and the asymmetrical split second disturbance values are aggregated over the active interval of the speech files (the corresponding frames) now using L 2 norms.
  • the higher value of p for the aggregation within split second intervals as compared to the lower p value of the aggregation over the speech file is due to the fact that when parts of the split seconds are distorted that split second loses meaning, whereas if a first sentence in a speech file is distorted the quality of other sentences remains intact.
  • the final PESQ score is a linear combination of the average disturbance value and the average asymmetrical disturbance value.
  • the range of the PESQ score is -0.5 to 4.5, although for most cases the output range will be a listening quality MOS-like score between 1.0 and 4.5, the normal range of MOS values found in an ACR (Absolute Category Rating) experiment.
  • Figure 2 is equal to figure 1, with the exception of a first new module, replacing the prior-art module for calculation the local scaling factor and a new second module, replacing the prior-art module for perceptial subtraction.
  • the first new module is fit for execution of the method according the invention, comprising means for scaling the output signal and/or the input signal of the system under test, under control of a new, "soft-scaling" algorithm, compensating small deviations of the power, while compensating larger deviations partially, dependent on the power ratio.
  • the first module is depicted in figure 3.
  • the second new module is fit for execution of a further elaboration of the invention, comprising means for the creation of an artificial reference speech signal, for which the noise levels as present in the original input speech signal are lowered by a scaling factor that depends on the local level of the noise in this input.
  • Figure 3 depicts the operation of the first new module shown in figure 2.
  • the operation of the module in figure 3 is controlled by the first sub-algorithm as represented by the depected flow diagram, improving the compensation function to correct for local gain changes in the output signal, by scaling the output resp. input in such way that small deviations of the power are compensated, preferably per time frame or period, while larger deviations are compensated partially, dependent on the power ratio.
  • the preferred simple and effective implementation of the invention takes the local powers, i.e. the power in each frame (of e.g.
  • the clipped ratio C is used to calculate a softscale ratio S by using factors m and M, with mm ⁇ m ⁇ 1.0 and MM > M ⁇ 1.0.
  • the local scaling in the present invention is equivalent to the scaling as given in the prior-art documents Recommendation P.862 and EP01200945 as long as m ⁇ F ⁇ M.
  • F ⁇ m or F > M the scaling is progressively deviating less from 1.0 than the scaling as given in the prior-art.
  • the softscale factor S is used in the same way F is used in the prior-art methods and systems to compensate the output power in each frame locally.
  • the second softscale processing controlled by a second sub-algorithm, advanced scaling is applied on low level parts of the input signal.
  • the input signal reference signal
  • a transparent speech transport system will give an output speech signal that also contains low levels of noise.
  • the output of the speech transport system is then judged of having lower quality then expected on the basis of the noise introduced by the transport system.
  • the input reference is not presented to the testing subject and consequently the subject judges low noise level differences in the input signal as differences in quality of the speech transport system.
  • the embodiment of the preferred option of the invention emulates this by creating an artificial reference speech signal in the power representation domain for which the noise power levels are lowered by a scaling factor that depends on the local level of the noise in the input signal.
  • the artificial reference signal converges to zero faster than the original input signal for low levels of this input signal.
  • the difference calculation in the internal representation loudness domain is carried out after scaling of the input loudness signal to a level that goes to zero faster than the loudness of the input signal as it approaches zero.
  • for LX(f)n ⁇ K or D(f)n
  • K represents the low level noise power criterion per time frequency cell.
  • the second softscale processing sub-algorithm can also be implemented by replacing the LX(f)n ⁇ K criterion by a power criterion in a single time frame.
  • for LX(t) ⁇ K' or D(f)n

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EP02075973A 2002-03-08 2002-03-08 System und Verfahren zur Messung der Qualität eines Übertragungssystems Withdrawn EP1343145A1 (de)

Priority Applications (10)

Application Number Priority Date Filing Date Title
EP02075973A EP1343145A1 (de) 2002-03-08 2002-03-08 System und Verfahren zur Messung der Qualität eines Übertragungssystems
DE60308336T DE60308336T2 (de) 2002-03-08 2003-02-26 Verfahren und system zur messung der übertragungsqualität eines systems
AU2003212285A AU2003212285A1 (en) 2002-03-08 2003-02-26 Method and system for measuring a system's transmission quality
EP03708155A EP1485691B1 (de) 2002-03-08 2003-02-26 Verfahren und system zur messung der übertragungsqualität eines systems
DK03708155T DK1485691T3 (da) 2002-03-08 2003-02-26 Fremgangsmåde og system til måling af et systems transmissionskvalitet
ES03708155T ES2272952T3 (es) 2002-03-08 2003-02-26 Procedimiento y sistema para medir la calidad de la transmision de un sistema.
US10/504,619 US7689406B2 (en) 2002-03-08 2003-02-26 Method and system for measuring a system's transmission quality
PCT/EP2003/002058 WO2003076889A1 (en) 2002-03-08 2003-02-26 Method and system for measuring a system's transmission quality
JP2003575064A JP4263620B2 (ja) 2002-03-08 2003-02-26 システムの伝送品質を測定する方法及びシステム
AT03708155T ATE339676T1 (de) 2002-03-08 2003-02-26 Verfahren und system zur messung der übertragungsqualität eines systems

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EP02075973A EP1343145A1 (de) 2002-03-08 2002-03-08 System und Verfahren zur Messung der Qualität eines Übertragungssystems

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Cited By (3)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP1975924A1 (de) * 2007-03-29 2008-10-01 Koninklijke KPN N.V. Verfahren und System zur Sprachqualitätsvorhersage des Einflusses von zeitlokalisierten Verzerrungen eines Audioübertragungssystems
WO2010140940A1 (en) * 2009-06-04 2010-12-09 Telefonaktiebolaget Lm Ericsson (Publ) A method and arrangement for estimating the quality degradation of a processed signal
CN102549657A (zh) * 2009-08-14 2012-07-04 皇家Kpn公司 用于确定音频系统的感知质量的方法和系统

Non-Patent Citations (4)

* Cited by examiner, † Cited by third party
Title
BEERENDS J.G., HEKSTRA A.P., RIX A.W. AND HOLLIER M.P.: "Perceptual Evaluation of Speech Quality (PESQ), the new ITU standard for end-to-end speech quality assessment. Part I - Time alignment", WWW.PSYTECHNICS.COM/PAPERS/, June 2001 (2001-06-01), pages 1 - 9, XP002206027 *
BEERENDS J.G., HEKSTRA A.P., RIX A.W. AND HOLLIER M.P.: "Perceptual Evaluation of Speech Quality (PESQ), the new ITU standard for end-to-end speech quality assessment. Part II - Psychoacoustic model", WWW.PSYTECHNICS.COM/PAPERS/, June 2001 (2001-06-01), pages 1 - 27, XP002206026 *
JOHN ANDERSON: "Methods for Measuring Perceptual Speech Quality passage", METHODS FOR MEASURING PERCEPTUAL SPEECH QUALITY, XX, XX, 1 March 2001 (2001-03-01), pages 1 - 34, XP002172414 *
RIX A W ET AL: "Perceptual evaluation of speech quality (PESQ)-a new method for speech quality assessment of telephone networks and codecs", 2001 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING. PROCEEDINGS (CAT. NO.01CH37221), vol. 2, 7 May 2001 (2001-05-07) - 11 May 2001 (2001-05-11), SALT LAKE CITY, UT, USA, Piscataway, NJ, USA, IEEE, USA, pages 749 - 752, XP002187839, ISBN: 0-7803-7041-4 *

Cited By (6)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP1975924A1 (de) * 2007-03-29 2008-10-01 Koninklijke KPN N.V. Verfahren und System zur Sprachqualitätsvorhersage des Einflusses von zeitlokalisierten Verzerrungen eines Audioübertragungssystems
WO2008119510A2 (en) * 2007-03-29 2008-10-09 Koninklijke Kpn N.V. Method and system for speech quality prediction of the impact of time localized distortions of an audio trasmission system
WO2008119510A3 (en) * 2007-03-29 2008-12-31 Koninkl Kpn Nv Method and system for speech quality prediction of the impact of time localized distortions of an audio trasmission system
WO2010140940A1 (en) * 2009-06-04 2010-12-09 Telefonaktiebolaget Lm Ericsson (Publ) A method and arrangement for estimating the quality degradation of a processed signal
US8949114B2 (en) 2009-06-04 2015-02-03 Optis Wireless Technology, Llc Method and arrangement for estimating the quality degradation of a processed signal
CN102549657A (zh) * 2009-08-14 2012-07-04 皇家Kpn公司 用于确定音频系统的感知质量的方法和系统

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