作者
Thomas Mensink, Jakob Verbeek, Florent Perronnin, Gabriela Csurka
发表日期
2013/5/20
期刊
Transactions on Pattern Analysis and Machine Intelligence (PAMI)
卷号
35
期号
11
页码范围
2624-2637
出版商
IEEE
简介
We study large-scale image classification methods that can incorporate new classes and training images continuously over time at negligible cost. To this end, we consider two distance-based classifiers, the k-nearest neighbor (k-NN) and nearest class mean (NCM) classifiers, and introduce a new metric learning approach for the latter. We also introduce an extension of the NCM classifier to allow for richer class representations. Experiments on the ImageNet 2010 challenge dataset, which contains over 10 6 training images of 1,000 classes, show that, surprisingly, the NCM classifier compares favorably to the more flexible k-NN classifier. Moreover, the NCM performance is comparable to that of linear SVMs which obtain current state-of-the-art performance. Experimentally, we study the generalization performance to classes that were not used to learn the metrics. Using a metric learned on 1,000 classes, we show …
引用总数
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学术搜索中的文章
T Mensink, J Verbeek, F Perronnin, G Csurka - IEEE transactions on pattern analysis and machine …, 2013