Title :
Kernel Machine Classification Using Universal Embeddings
Author :
Boufounos, Petros T. ; Mansour, Hassan
Author_Institution :
Mitsubishi Electr. Res. Labs., Cambridge, MA, USA
Abstract :
Summary form only given. Visual inference over a transmission channel is increasingly becoming an important problem in a variety of applications. In such applications, low latency and bit-rate consumption are often critical performance metrics, making data compression necessary. In this paper, we examine feature compression for support vector machine (SVM)-based inference using quantized randomized embeddings. We demonstrate that embedding the features is equivalent to using the SVM kernel trick with a mapping to a lower dimensional space. Furthermore, we show that universal embeddings - a recently proposed quantized embedding design - approximate a radial basis function (RBF) kernel, commonly used for kernel-based inference. Our experimental results demonstrate that quantized embeddings achieve 50% rate reduction, while maintaining the same inference performance. Moreover, universal embeddings achieve a further reduction in bit-rate over conventional quantized embedding methods, validating the theoretical predictions.
Keywords :
data compression; inference mechanisms; learning (artificial intelligence); pattern classification; radial basis function networks; support vector machines; RBF kernel; SVM; feature compression; kernel machine classification; kernel-based inference; radial basis function; support vector machine; universal embedding; visual inference; Approximation methods; Data compression; Kernel; Laboratories; Measurement; Support vector machines; Visualization; kernel methods; randomized embeddings; support vector machines (SVM); universal quantization; visual inference;
Conference_Titel :
Data Compression Conference (DCC), 2015
Conference_Location :
Snowbird, UT
DOI :
10.1109/DCC.2015.61