Title :
Additive Quantization for Extreme Vector Compression
Author :
Babenko, Artem ; Lempitsky, Victor
Author_Institution :
Yandex, Moscow, Russia
Abstract :
We introduce a new compression scheme for high-dimensional vectors that approximates the vectors using sums of M codewords coming from M different codebooks. We show that the proposed scheme permits efficient distance and scalar product computations between compressed and uncompressed vectors. We further suggest vector encoding and codebook learning algorithms that can minimize the coding error within the proposed scheme. In the experiments, we demonstrate that the proposed compression can be used instead of or together with product quantization. Compared to product quantization and its optimized versions, the proposed compression approach leads to lower coding approximation errors, higher accuracy of approximate nearest neighbor search in the datasets of visual descriptors, and lower image classification error, whenever the classifiers are learned on or applied to compressed vectors.
Keywords :
image classification; image coding; learning (artificial intelligence); vector quantisation; additive quantization; approximate nearest neighbor search; classifiers; codebook learning algorithms; codewords; coding approximation errors; coding error minimization; distance computations; extreme vector compression; high-dimensional vectors; image classification error; product quantization; scalar product computations; vector approximation; vector encoding; visual descriptors; Additives; Approximation error; Encoding; Optimization; Quantization (signal); Vectors;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.124