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Gradient-based Feature Extraction From Raw Bayer Pattern Images

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arxiv 2004.02429 v3 pith:WDM2SXIL submitted 2020-04-06 eess.IV

Gradient-based Feature Extraction From Raw Bayer Pattern Images

classification eess.IV
keywords bayerextractionpatternalgorithmsfeatureimagesgradient-baseddemosaicing
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, the impact of demosaicing on gradient extraction is studied and a gradient-based feature extraction pipeline based on raw Bayer pattern images is proposed. It is shown both theoretically and experimentally that the Bayer pattern images are applicable to the central difference gradient-based feature extraction algorithms without performance degradation, or even with superior performance in some cases. The color difference constancy assumption, which is widely used in various demosaicing algorithms, is applied in the proposed Bayer pattern image-based gradient extraction pipeline. Experimental results show that the gradients extracted from Bayer pattern images are robust enough to be used in histogram of oriented gradients (HOG)-based pedestrian detection algorithms and shift-invariant feature transform (SIFT)-based matching algorithms.

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