Authors
Zhenyu An, Zhenwei Shi, Ying Wu, Changshui Zhang
Publication date
2015/8/1
Journal
Pattern Recognition
Volume
48
Issue
8
Pages
2581-2591
Publisher
Pergamon
Description
Analyzing image of traffic scenes plays a major role in intelligent transportation systems. Regions of interest, including traffic signs, vehicles or some other man-made objects, largely attract drivers׳ attention. With different prior knowledge, conventional approaches generally define and build dedicated detectors to each class of such regions. In contrast, this paper focuses on explaining what regions in traffic images can be of interest, which is a critical problem yet neglected before. Instead of pre-defining the detectors, a computational model based on an unsupervised way is proposed. The core idea is to simulate an image with multiple bands from the given traffic image by stacking the spatial information. Our study shows that the distribution of such data can be captured by a simplex in a linear subspace, and each data point can be represented by a linear reconstruction over the set of vertices of the simplex. An …
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