Continuous dimensionality characterization of image structures

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摘要

Intrinsic dimensionality is a concept introduced by statistics and later used in image processing to measure the dimensionality of a data set. In this paper, we introduce a continuous representation of the intrinsic dimension of an image patch in terms of its local spectrum or, equivalently, its gradient field. By making use of a cone structure and barycentric co-ordinates, we can associate three confidences to the three different ideal cases of intrinsic dimensions corresponding to homogeneous image patches, edge-like structures and junctions. The main novelty of our approach is the representation of confidences as prior probabilities which can be used within a probabilistic framework. To show the potential of our continuous representation, we highlight applications in various contexts such as image structure classification, feature detection and localisation, visual scene statistics and optic flow evaluation.

论文关键词:Intrinsic dimensionality,Feature extraction and classification

论文评审过程:Received 26 January 2007, Revised 10 June 2008, Accepted 28 June 2008, Available online 18 July 2008.

论文官网地址:https://doi.org/10.1016/j.imavis.2008.06.018