Chi-Squared Distance Metric Learning for Histogram Data

Volume: 2015, Pages: 1 - 12
Published: Jan 1, 2015
Abstract
Learning a proper distance metric for histogram data plays a crucial role in many computer vision tasks. The chi-squared distance is a nonlinear metric and is widely used to compare histograms. In this paper, we show how to learn a general form of chi-squared distance based on the nearest neighbor model. In our method, the margin of sample is first defined with respect to the nearest hits (nearest neighbors from the same class) and the nearest...
Paper Details
Title
Chi-Squared Distance Metric Learning for Histogram Data
Published Date
Jan 1, 2015
Volume
2015
Pages
1 - 12
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