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Retaining Image Feature Matching Performance Under Low Light Conditions

2020-09-02 06:44:45
Pranjay Shyam, Antyanta Bangunharcana, Kyung-Soo Kim

Abstract

Poor image quality in low light images may result in a reduced number of feature matching between images. In this paper, we investigate the performance of feature extraction algorithms in low light environments. To find an optimal setting to retain feature matching performance in low light images, we look into the effect of changing feature acceptance threshold for feature detector and adding pre-processing in the form of Low Light Image Enhancement (LLIE) prior to feature detection. We observe that even in low light images, feature matching using traditional hand-crafted feature detectors still performs reasonably well by lowering the threshold parameter. We also show that applying Low Light Image Enhancement (LLIE) algorithms can improve feature matching even more when paired with the right feature extraction algorithm.

Abstract (translated)

URL

https://arxiv.org/abs/2009.00842

PDF

https://arxiv.org/pdf/2009.00842.pdf


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