Modeling The Impact Of Keypoint Detection Errors On Local Descriptor Similarity

2016 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP)(2016)

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摘要
This paper presents a mathematical analysis of the impact of key point detection errors on the similarity of local image descriptors that are based on histogram of gradients. First, we derive a closed-form expression for the L-P distance between two descriptors, for general translation, scale and orientation detection errors. Second, we introduce a detailed analysis for the special case where translation errors dominate, using the L-2 distance. We show that the individual components which form the squared L-2 distance can be approximated using Gamma distributions whose parameters are computed in closed-form by our model. We obtain approximate closed-form expressions for the expected squared L-2 distances when translation errors are fixed or uniformly distributed. Finally, these models are validated using image patches extracted from two standard image retrieval datasets, by comparing the predicted distributions to the ground-truth.
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关键词
local descriptors,keypoint detection,histogram of gradients
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