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Allen Gersho

Researcher at University of California, Santa Barbara

Publications -  268
Citations -  22540

Allen Gersho is an academic researcher from University of California, Santa Barbara. The author has contributed to research in topics: Vector quantization & Speech coding. The author has an hindex of 60, co-authored 266 publications receiving 22083 citations. Previous affiliations of Allen Gersho include University of California, Berkeley & Bell Labs.

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Vector Quantization and Signal Compression

TL;DR: The author explains the design and implementation of the Levinson-Durbin Algorithm, which automates the very labor-intensive and therefore time-heavy and expensive process of designing and implementing a Quantizer.
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Theory of the photoacoustic effect with solids

TL;DR: In this article, a quantitative derivation for the acoustic signal in a photoacoustic cell in terms of the optical, thermal, and geometric parameters of the system is presented. And the theory predicts the dependence of the signal on the absorption coefficient of the solid, thereby giving a theoretical foundation for the technique of photoacoustical spectroscopy.
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Asymptotically optimal block quantization

TL;DR: A heuristic argument generalizing Bennett's formula to block quantization where a vector of random variables is quantized is given, leading to a rigorous method for obtaining upper bounds on the minimum distortion for block quantizers.
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Efficient bit allocation for an arbitrary set of quantizers (speech coding)

TL;DR: In this article, a bit allocation algorithm that is capable of efficiently allocating a given quota of bits to an arbitrary set of different quantizers is proposed, which produces an optimal or very nearly optimal allocation, while allowing the set of admissible bit allocation values to be constrained to nonnegative integers.
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Classified Vector Quantization of Images

TL;DR: This work proposes a new coding method, classified vector quantization (CVQ), which is based on a composite source model and obtains better perceptual quality with significantly lower complexity with CVQ when compared to ordinary VQ.