The present invention relates in general to adaptive filters and, more particularly to a reduced complexity recursive least square lattice structure adaptive filter.
Adaptive filters are found in a wide range of applications and come in a wide variety of configurations each with distinctive properties. A particular configuration chosen may depend on specific properties needed for a target application. These properties, which include among others, rate of convergence, mis-adjustment, tracking, and computational requirements, are evaluated and weighed against each other to determine the appropriate configuration for the target application.
Of particular interest when choosing an adaptive filter configuration for use in a non-stationary signal environment are the rate of convergence, the mis-adjustment and the tracking capability. Good tracking capability is generally a function of the convergence rate and mis-adjustment properties of a corresponding algorithm. However, these properties may be contradictory in nature, in that a higher convergence rate will typically result in a higher convergence error or mis-adjustment of the resulting filter.
A recursive least squares (RLS) algorithm is generally a good tool for the non-stationary signal environment due to its fast convergence rate and low level of mis-adjustment. One particular form of the RLS algorithm is a recursive least squares lattice (RLSL) algorithm. The initial RLSL algorithm was introduced by Simon Haykin, and can be found in the “Adaptive Filter Theory Third Edition” book. The RLS class of adaptive filters exhibit fast convergence rates and are relatively insensitive to variations in an eigenvalue spread. Eigenvalues are a measure of correlation properties of the reference signal and the eigenvalue spread is typically defined as a ratio of the highest eigenvalue to the lowest eigenvalue. A large eigenvalue spread significantly slows down the rate of convergence for most adaptive algorithms.
However, the RLS algorithm typically requires extensive computational resources and can be prohibitive for embedded systems. Accordingly, there is a need to provide a mechanism by which the computational requirements of an RLSL structure adaptive filter are reduced.
a-1d illustrate four schematic diagrams of applications employing an adaptive filter;
Illustrative and exemplary embodiments of the invention are described in further detail below with reference to and in conjunction with the figures.
A method for reducing a computational complexity of an m-stage adaptive filter is provided by updating recursively forward and backward error prediction square terms for a first portion of a length of the adaptive filter, and keeping the updated forward and backward error prediction square terms constant for a second portion of the length of the adaptive filter. The present invention is defined by the appended claims. This description addresses some aspects of the present embodiments and should not be used to limit the claims.
a-1d illustrate four schematic diagrams of filter circuits 90 employing an adaptive filter 10. The filter circuits 90 in general and the adaptive filter 10 may be constructed in any suitable manner. In particular, the adaptive filter 10 may be formed using electrical components such as digital and analog integrated circuits. In other examples, the adaptive filter 10 is formed using a digital signal processor (DSP) operating in response to stored program code and data maintained in a memory. The DSP and memory may be integrated in a single component such as an integrated circuit, or may be maintained separately. Further, the DSP and memory may be components of another system, such as a speech processing system or a communication device.
In general, an input signal u(n) is supplied to the filter circuit 90 and to the adaptive filter 10. As shown, the adaptive filter 10 may be configured in a multitude of arrangements between a system input and a system output. It is intended that the improvements described herein may be applied to the widest variety of applications for the adaptive filter 10.
In
In
In
In
Now referring to
An RLSL algorithm for the RLSL 100 is defined below in terms of Equation 1 through Equation 8.
Where the filter coefficient updates are defined as follows:
At stage zero, the RLSL 100 is supplied by signals u(n) 12 and d(n) 20. Subsequently, for each stage m, the above defined filter coefficient updates are recursively computed. For example at stage m and time n, the forward prediction error η(n) 102 is the forward prediction error ηm−1 (n) 103 of stage m−1 augmented by a combination of the forward reflection coefficient Kf,m−1(n−1) 104 with the delayed backward prediction error βm−1 (n) 105.
In a similar fashion, at stage m and time n, the backward prediction error βm (n) 106 is the backward prediction error βm−1 (n) 105 of stage m−1 augmented by a combination of the backward reflection coefficient Kb,m(n−1) 107 with the delayed forward prediction error ηm−1 (n) 103.
Moreover, a-priori estimation error backward ξm+1(n) 108, for stage m at time n, is the a priori estimation error backward ξm (n) 109 of stage m−1 reduced by a combination of the joint process regression coefficient Km−1(n−1) 110, of stage m−1 at time n−1, with the backward forward prediction error βm−1 (n) 105.
The adaptive filter 100 may be implemented using any suitable component or combination of components. In one embodiment, the adaptive filter is implemented using a DSP in combination with instructions and data stored in an associated memory. The DSP and memory may be part of any suitable system for speech processing or manipulation. The DSP and memory can be a stand-alone system or embedded in another system.
This RLSL algorithm requires extensive computational resources and can be prohibitive for embedded systems. As such, a mechanism for reducing the computational requirements of an RLSL adaptive filter 100 is obtained by reducing a number of calculated updates of the forward error prediction squares Fm(n) from backward error prediction squares Bm (n).
Typically, processors are substantially efficient at adding, subtracting and multiplying, but not necessarily at dividing. Most processors use a successive approximation technique to implement a divide instruction and may require multiple clock cycles to produce a result. As such, in an effort to reduce computational requirements, a total number of computations in the filter coefficient updates may need to be reduced as well as a number of divides that are required in the calculations of the filter coefficient updates. Thus, the RLSL algorithm filter coefficient updates are transformed to consolidate the divides. First, the time (n) and order (m) indices of the RLSL algorithm are translated to form Equation 9 through Equation 17.
Then, the forward error prediction squares Fm(n) and the backward error prediction squares Bm(n) are inverted and redefined to be their reciprocals as shown in Equation 18, Equation 20 and Equation 21. Thus, by inverting Equation 9 we get:
Then redefine the forward error prediction squares Fm(n):
Then insert into Equation 18 and simplify:
By the same reasoning the backwards error prediction square Equation 10 becomes
Further, new definitions for the forward and backward error prediction squares, F′m (n) and B′m(n), are inserted back into the remaining equations, Equation 13, Equation 14, Equation 15, and Equation 17, to produce the algorithm coefficient updates as shown below in Equation 22 through Equation 30.
Now referring to
Now referring to
In
Thus, a good mechanism for trading performance with computational requirements is to reduce the number of recursions or updates performed on the forward and backward error prediction squares, Fm (n) and Bm(n), to a predefined portion of the filter length. Then, the error prediction squares are held constant for the remainder of the filter tap updates. A minimal loss in a performance of the adaptive filter may result as the number of updates is decreased, but a gain in real-time performance can justify the minimal loss in filter performance.
To generate the plot of
Now referring to
In the final realization of the optimized RLSL algorithm, the recursion loop is broken into two parts. The first part is the full set of updates as shown in Equation 22 through Equation 30. These updates are performed as normal up to a predefined number of taps of the filter. The exact number of taps needed of course is determined by the trade off analysis between real time and filter performance. The second part of the optimized RLSL algorithm is given by Equation 31 through Equation 37. In these series of recursive updates, the forward and backward error prediction squares, Fm (n) and Bm(n), are held constant at the last value calculated from the first part of the optimized algorithm.
For the remaining filter updates the forward error prediction square term (Fc) remains constant and is used in Equation 32 to update the backward reflection coefficient Kb,m(n). Moreover, the backward error prediction square term (Bc) remains constant for the remainder of the filter updates and is used in Equation 34 to update the forward reflection coefficient Kf,m(n).
βm(n)=βm−1(n−1)+Kb,m(n−1)ηm−1(n) Equation 31
Kb,m(n)=Kb,m(n−1)−γm−1(n−1)ηm−1(n)βm(n)Fc Equation 32
ηm(n)=ηm−1(n)+Kf,m(n−1)βm−1(n−1) Equation 33
Kf,m(n)=Kf,m(n−1)−γm−1(n−1)βm−1(n−1)ηm(n)Bc Equation 34
ξm(n)=ξm−1(n)−Km−1(n−1)βm−1(n) Equation 35
Km(n)=Km(n−1)+γm(n)βm(n)ξm+1(n)Bc Equation 36
γm(n)=γm−1(n)−γ2m−1(n)|βm−1(n)|2Bc Equation 37
The communication device 1100 includes a microphone 1104 and speaker 1106 and analog signal processor 1108. The microphone 1104 converts sound waves impressed thereon to electrical signals. Conversely, the speaker 1106 converts electrical signals to audible sound waves. The analog signal processor 1108 serves as an interface between the DSP, which operates on digital data representative of the electrical signals, and the electrical signals useful to the microphone 1104 and 1106. In some embodiments, the analog signal processor 1108 may be integrated with the DSP 1102.
The network connection 1110 provides communication of data and other information between the communication device 1100 and other components. This communication may be over a wire line, over a wireless link, or a combination of the two. For example, the communication device 1100 may be embodied as a cellular telephone and the adaptive filter 1112 operates to process audio information for the user of the cellular telephone. In such an embodiment, the network connection 1110 is formed by the radio interface circuit that communicates with a remote base station. In another embodiment, the communication device 1100 is embodied as a hands-free, in-vehicle audio system and the adaptive filter 1112 is operative to serve as part of a double-talk detector of the system. In such an embodiment, the network connection 1110 is formed by a wire line connection over a communication bus of the vehicle.
In the embodiment of
In operation, the adaptive filter 1112 receives an input signal from a source and provides a filtered signal as an output. In the illustrated embodiment, the DSP 1102 receives digital data from either the analog signal processor 1108 or the network interface 1110. The analog signal processor 1108 and the network interface 1110 thus form means for receiving an input signal. The digital data is representative of a time-varying signal and forms the input signal. As part of audio processing, the processor 1116 of DSP 1102 implements the adaptive filter 1112. The data forming the input signal is provided to the instructions and data forming the adaptive filter. The adaptive filter 1112 produces an output signal in the form of output data. The output data may be further processed by the DSP 1102 or passed to the analog signal processor 1108 or the network interface 1110 for further processing.
The communication device 1100 may be modified and adapted to other embodiments as well. The embodiments shown and described herein are intended to be exemplary only.
It is therefore intended that the foregoing detailed description be regarded as illustrative rather than limiting, and that it be understood that it is the following claims, including all equivalents, that are intended to define the spirit and scope of this invention.
This application claims the benefit of U.S. Provisional Application No. 60/692,345, filed Jun. 20, 2005, U.S. Provisional Application No. 60/692,236, filed Jun. 20, 2005, and U.S. Provisional Application No. 60/692,347, filed Jun. 20, 2005, all of which are incorporated herein by reference.
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