1. Field of the Invention
The present invention relates to multi-channel audio and particularly to the delivery of high quality and distortion-free multi-channel audio in an enclosure.
2. Description of the Background Art
The inventors have recognized that the acoustics of an enclosure (e.g., room, automobile interior, movie theaters, etc.) play a major role in introducing distortions in the audio signal perceived by listeners.
A typical room is an acoustic enclosure that can be modeled as a linear system whose behavior at a particular listening position is characterized by an impulse response, h(n) {n=0, 1, . . . , N−1}. This is called the room impulse response and has an associated frequency response, H(ejw). Generally, H(ejw) is also referred to as the room transfer function (RTF). The impulse response yields a complete description of the changes a sound signal undergoes when it travels from a source to a receiver (microphone/listener). The signal at the receiver contains consists of direct path components, discrete reflections that arrive a few milliseconds after the direct sound, as well as a reverberant field component.
It is well established that room responses change with source and receiver locations in a room. A room response can be uniquely defined for a set of spatial co-ordinates (xi, yi, zi). This assumes that the source (loudspeaker) is at origin (0, 0, 0) and the receiver (microphone or listener) is at the spatial co-ordinates, xi, yi and zi, relative to a source in the room.
Now, when sound is transmitted in a room from a source to a specific. receiver, the frequency response of the audio signal is distorted at the receiving position mainly due to interactions with room boundaries and the buildup of standing waves at low frequencies.
One mechanism to minimize these distortions is to introduce an equalizing filter that is an inverse (or approximate inverse) of the room impulse response for a given source-receiver position. This equalizing filter is applied to the audio signal before it is transmitted by the loudspeaker source. Thus, if heq(n) is the equalizing filter for h(n), then, for perfect equalization heq(n){circle around (×)}h(n)=δ(n); where {circle around (×)} is the convolution operator and δ(n) is the Kronecker delta function.
However, the inventors have realized that at least two problems arise when using this approach, (i) the room response is not necessarily invertible (i.e., it is not minimum phase), and (ii) designing an equalizing filter for a specific receiver (or listener) will produce poor equalization performance at other locations in the room. In other words, multiple-listener equalization cannot be achieved with a single equalizing filter. Thus, room equalization, which has traditionally been approached as a classic inverse filter problem, will not work in practical environments where multiple-listeners are present.
Given this, there is a need to develop a system and a method for correcting distortions introduced by the room, simultaneously, at multiple-listener positions.
The present invention provides a system and a method for delivering substantially distortion-free audio, simultaneously, to multiple listeners in any environment (e.g., free-field, home-theater, movie-theater, automobile interiors, airports, rooms, etc.). This is achieved by means of a filter that automatically corrects the room acoustical characteristics at multiple-listener positions.
Accordingly, in one embodiment, the method for correcting room acoustics at multiple-listener positions includes: (i) measuring a room acoustical response at each listener position in a multiple-listener environment; (ii) determining a general response by computing a weighted average of the room acoustical responses; and (iii) obtaining a room acoustic correction filter from the general response, wherein the room acoustic correction filter corrects the room acoustics at the multiple-listener positions. The method may further include the step of generating a stimulus signal (e.g., a logarithmic chirp signal, a broadband noise signal, a maximum length signal, or a white noise signal) from at least one loudspeaker for measuring the room acoustical response at each of the listener position.
In one aspect of the invention, the general response is determined by a pattern recognition method such as a hard c-means clustering method, a fuzzy c-means clustering method, any well known adaptive learning method (e.g., neural-nets, recursive least squares, etc.), or any combination thereof.
The method may further include the step of determining a minimum-phase signal and an all-pass signal from the general response. Accordingly, in one aspect of the invention, the room acoustic correction filter could be the inverse of the minimum-phase signal. In another aspect, the room acoustic correction filter could be the convolution of the inverse minimum-phase signal and a matched filter that is derived from the all-pass signal.
Thus, filtering each of the room acoustical responses with the room acoustical correction filter will provide a substantially flat magnitude response in the frequency domain, and a signal substantially resembling an impulse function in the time domain at each of the listener positions.
In another embodiment of the present invention, the method for generating substantially distortion-free audio at multiple-listeners in an environment includes: (i) measuring the acoustical characteristics of the environment at each expected listener position in the multiple-listener environment; (ii) determining a room acoustical correction filter from the acoustical characteristics at the each of the expected listener positions; (iii) filtering an audio signal with the room acoustical correction filter; and (iv) transmitting the filtered audio from at least one loudspeaker, wherein the audio signal received at said each expected listener position is substantially free of distortions.
The method may further include the step of determining a general response, from the measured acoustical characteristics at each of the expected listener positions, by a pattern recognition method (e.g., hard c-means clustering method, fuzzy c-means clustering method, a suitable adaptive learning method, or any combination thereof). Additionally, the method could include the step of determining a minimum-phase signal and an all-pass signal from the general response.
In one aspect of the invention, the room acoustical correction filter could be the inverse of the minimum-phase signal, and in another aspect of the invention, the filter could be obtained by filtering the minimum-phase signal with a matched filter (the matched filter being obtained from the all-pass signal).
In one aspect of the invention, the pattern recognition method is a c-means clustering method that generates at least one cluster centroid. Then, the method may further include the step of forming the general response from the at least one cluster centroid.
Thus, filtering each of the acoustical characteristics with the room acoustical correction filter will provide a substantially flat magnitude response in the frequency domain, and a signal substantially resembling an impulse function in the time domain at each of the expected listener positions.
In one embodiment of the present invention, a system for generating substantially distortion-free audio at multiple-listeners in an environment comprises: (i) a multiple-listener room acoustic correction filter implemented in the semiconductor device, the room acoustic correction filter formed from a weighted average of room acoustical responses, and wherein each of the room acoustical responses is measured at an expected listener position, wherein an audio signal filtered by said room acoustic correction filter is received substantially distortion-free at each of the expected listener positions. Additionally, at least one of the stimulus signal and the filtered audio signal are transmitted from at least one loudspeaker.
In one aspect of the invention, the weighted average is determined by a pattern recognition system (e.g., hard c-means clustering system, a fuzzy c-means clustering system, an adaptive learning system, or any combination thereof). The system may further include a means for determining a minimum-phase signal and an all-pass signal from the weighted average.
Accordingly, the correction filter could be either the inverse of the minimum-phase signal or a filtered version of the minimum-phase signal (obtained by filtering the minimum-phase signal with a matched filter, the matched filter being obtained from the all-pass signal of the weighted average).
In one aspect of the invention, the pattern recognition means may be a c-means clustering system that generates at least one cluster centroid. Then, the system may further include means for forming the weighted average from the at least one cluster centroid.
Thus, filtering each of the acoustical responses with the room acoustical correction filter will provide a substantially flat magnitude response in the frequency domain, and a signal substantially resembling an impulse function in the time domain at each of the expected listener positions.
In another embodiment of the present invention, the method for correcting room acoustics at multiple-listener positions includes: (i) clustering each room acoustical response into at least one cluster, wherein each cluster includes a centroid; (ii) forming a general response from the at least one centroid; and (iii) determining a room acoustic correction filter from the general response, wherein the room acoustic correction filter corrects the room acoustics at the multiple-listener positions.
In one aspect of the present invention, the method may further include the step of determining a stable inverse of the general response, the stable inverse being included in the room acoustic correction filter.
Thus, filtering each of the acoustical responses with the room acoustical correction filter will provide a substantially flat magnitude response in the frequency domain, and a signal substantially resembling an impulse function in the time domain at the multiple-listener positions.
In another embodiment of the present invention, the method for correcting room acoustics at multiple-listener positions comprises: (i) clustering a direct path component of each acoustical response into at least one direct path cluster, wherein each direct path cluster includes a direct path centroid; (ii) clustering reflection components of each of the acoustical response into at least one reflection path cluster, wherein said each reflection path cluster includes a reflection path centroid; (iii) forming a general direct path response from the at least one direct path centroid and a general reflection path response from the at least one reflection path centroid; and (iv) determining a room acoustic correction filter from the general direct path response and the general reflection path response, wherein the room acoustic correction filter corrects the room acoustics at the multiple-listener positions.
In another embodiment of the present invention, the method for correcting room acoustics at multiple-listener positions includes: (i) determining a general response by computing a weighted average of room acoustical responses, wherein each room acoustical response corresponds to a sound propagation characteristics from a loudspeaker to a listener position; and (ii) obtaining a room acoustic correction filter from the general response, wherein the room acoustic correction filter corrects the room acoustics at the multiple-listener positions.
The sound propagation characteristics may be described by the room acoustical impulse response, which is a compact representation of how sound propagates in an environment (or enclosure). Thus, the room acoustical response includes the direct path and the reflection path components of the sound field. The room acoustical response may be measured by a microphone at an expected listener position. This is done by, (i) transmitting a stimulus signal (e.g., a logarithm chirp, a broadband noise signal, a maximum length signal, or any other signal that sufficiently excites the enclosure modes) from the loudspeaker, (ii) recording the signal received at an expected listener position, and (iii) removing (deconvolving) the response of the microphone (also possibly removing the response associated with the loudspeaker).
Even though the direct and reflection path taken by the sound from each loudspeaker to each listener may appear to be different (i.e., the room acoustical impulse responses may be different), there may be inherent similarities in the measured room responses. In one embodiment of the present invention, these similarities in the room responses, between loudspeakers and listeners, may be used to form a room acoustical correction filter.
Furthermore, the right panels, 68 and 72, clearly show a significant amount of distortion introduced at various frequencies. Specifically, certain frequencies are boosted (e.g., 150 Hz in the bottom right panel 72), whereas other frequencies are attenuated (e.g., 150 Hz in the top right panel 68) by more than 10 dB. One of the objectives of the room acoustical correction filter is to reduce the deviation in the magnitude response, at all expected listener positions simultaneously, and make the spectrum envelopes flat. Another objective is to remove the effects of early and late reflections, so that the effective response (after applying the room acoustical correction filter) is a delayed Kronecker delta function, δ(n), at all listener positions.
Specifically, the top left panel 80 in
Since the room acoustical responses are substantially different for different source-listener positions, it seems natural that whatever similarities reside in the responses be maximally utilized for designing the room acoustical correction filter 100. Accordingly, in one aspect of the present invention, the room acoustical correction filter 100 may be designed using a “similarity” search algorithm or a pattern recognition algorithm/system. In another aspect of the present invention, the room acoustical correction filter 100 may be designed using a weighted average scheme that employs the similarity search algorithm. The weighted average scheme could be a recursive least squares scheme, a scheme based on neural-nets, an adaptive learning scheme, a pattern recognition scheme, or any combination thereof.
In one aspect of the present invention, the “similarity” search algorithm is a c-means algorithm (e.g., the hard c-means of fuzzy c-means, also called k-means in some literatures). The motivation for using a clustering algorithm, such as the fuzzy c-means algorithm, is described with the aid of
The fuzzy c-means clustering procedures use an objective function, such as a sum of squared distances from the cluster room response prototypes, and seek a grouping (cluster formation) that extremizes the objective function. Specifically, the objective function, Jκ( . , . ), to minimize in the fuzzy c-means algorithm is:
In the above equation, ĥi*, denotes the i-th cluster room response prototype (or centroid), hk is the room response expressed in vector form (i.e., hk=(hi(n);n=0,1, . . . )=(hi(0),hi(1), . . . , hi(M−1))T and T represents the transpose operator), N is the number of listeners, c denotes the number of clusters (c was selected as √{square root over (N)}, but could be some value less than N), μi(hk) is the degree of membership of acoustical response k in cluster i, dik is the distance between centroid ĥi* and response hk, and κ is a weighting parameter that controls the fuzziness in the clustering procedure. When κ=1, fuzzy c-means algorithm approaches the hard c-means algorithm. The parameter κ was set at 2 (although this could be set to a different value between 1.25 and infinity). It can be shown that on setting the following:
∂J2(−)/∂ĥ*i=0 and ∂J2(−)/∂μi(hk)=0
yields:
An iterative optimization was used for determining the quantites in the above equations. In the trivial case when all the room responses belong to a single cluster, the single cluster room response prototype ĥi* is the uniform weighted average (i.e., a spatial average) of the room responses since, μi(hk)=1, for all k. In one aspect of the present invention for designing the room acoustical correction filter, the resulting room response formed from spatially averaging the individual room responses at multiple locations is stably inverted to form a multiple-listener room acoustical correction filter. In reality, the advantage of the present invention resides in applying non-uniform weights to the room acoustical responses in an intelligent manner (rather than applying equal weighting to each of these responses).
After the centroids are determined, it is required to form the room acoustical correction filter. The present invention includes different embodiments for designing multiple-listener room acoustical correction filters.
A. Spatial Equalizing Filter Bank:
B. Combining the Acoustical Room Responses Using Fuzzy Membership Functions:
The objective may be to design a single equalizing or room acoustical correction filter (either for each loudspeaker and multiple-listener set, or for all loudspeakers and all listeners), using the prototypes or centroids ĥi*. In one embodiment of the present invention, the following model is used:
h
final is the general response (or final prototype) obtained by performing a weighted average of the centroids ĥi*. The weights for each of the centroids, ĥi*, is determined by the “weight” of that cluster “i”, and is expressed as:
It is well known in the art that any signal can be decomposed into its minimum-phase part and its all-pass part. Thus,
hfinal(n)=hmin,final(n){circle around (×)}hap,final(n)
The multiple-listener room acoustical correction filter is obtained by either of the following means, (i) inverting hfinal, (ii) inverting the minimum phase part, hmin,final, of hfinal, (iii) forming a matched filter
from the all pass component (signal), hap,final, of hfinal, and filtering this matched filter with the inverse of the minimum phase signal hmin,final. The matched filter may be determined, from the all-pass signal as follows:
Δ is a delay term and it may be greater than zero. In essence, the matched filter is formed by time-domain reversal and delay of the all-pass signal.
The matched filter for multiple-listener environment can be designed in several different ways: (i) form the matched filter for one listener and use this filter for all listeners, (ii) use an adaptive learning algorithm (e.g., recursive least squares, an LMS algorithm, neural networks based algorithm, etc.) to find a “global” matched filter that best fits the matched filters for all listeners, (iii) use an adaptive learning algorithm to find a “global” all-pass signal, the resulting global signal may be time-domain reversed and delayed to get a matched filter.
In another embodiment of the present invention, the pattern recognition technique can be used to cluster the direct path responses separately, and the reflective path components separately. The direct path centroids can be combined to form a general direct path response, and the reflective path centroids may be combined to form the general reflective path response. The direct path general response and the reflective path general response may be combined through a weighted process. The result can be used to determine the multiple-listener room acoustical correction filter (either by inverting the result, or the stable component, or via matched filtering of the stable component).
The description of exemplary and anticipated embodiments of the invention have been presented for the purposes of illustration and description. They are not intended to be exhaustive or to limit the invention to the precise forms disclosed. Many modifications and variations are possible in light of the teachings herein. For example, the number of loudspeakers and listeners may be arbitrary (in which case the correction filter may be determined (i) for each loudspeaker and multiple-listener responses, or (ii) for all loudspeakers and multiple-listener responses). Additional filtering may be done to shape the final response, at each listener, such that there is a gentle roll-off for specific frequency ranges (instead of having a substantially flat response).
The contents of this application are related to provisional application having serial No. 60/390,122 (filed Jun. 21, 2002). The contents of this related provisional application are incorporated herein by reference.
This invention was made with government support under Contract No. 9529152 awarded by the National Science Foundation. The government has certain rights in the invention.
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