Title of article :
On the relevance of sparsity for image classification
Author/Authors :
Rigamonti، نويسنده , , Roberto and Lepetit، نويسنده , , Vincent and Gonzلlez، نويسنده , , Germلn and Türetken، نويسنده , , Engin and Benmansour، نويسنده , , Fethallah and Brown، نويسنده , , Matthew and Fua، نويسنده , , Pascal، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
In this paper we empirically analyze the importance of sparsifying representations for classification purposes. We focus on those obtained by convolving images with linear filters, which can be either hand designed or learned, and perform extensive experiments on two important Computer Vision problems, image categorization and pixel classification. To this end, we adopt a simple modular architecture that encompasses many recently proposed models.
y outcome of our investigations is that enforcing sparsity constraints on features extracted in a convolutional architecture does not improve classification performance, whereas it does so when redundancy is artificially introduced. This is very relevant for practical purposes, since it implies that the expensive run-time optimization required to sparsify the representation is not always justified, and therefore that computational costs can be drastically reduced.
Keywords :
sparse representations , Image descriptors , Pixel classification , Image categorization
Journal title :
Computer Vision and Image Understanding
Journal title :
Computer Vision and Image Understanding