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DR2S : Deep Regression with Region Selection for Camera Quality Evaluation

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arxiv 2009.09981 v1 pith:D6OJHONC submitted 2020-09-21 cs.CV

DR2S : Deep Regression with Region Selection for Camera Quality Evaluation

classification cs.CV
keywords qualityregionselectiontexturecameradeepevaluationhuman
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this work, we tackle the problem of estimating a camera capability to preserve fine texture details at a given lighting condition. Importantly, our texture preservation measurement should coincide with human perception. Consequently, we formulate our problem as a regression one and we introduce a deep convolutional network to estimate texture quality score. At training time, we use ground-truth quality scores provided by expert human annotators in order to obtain a subjective quality measure. In addition, we propose a region selection method to identify the image regions that are better suited at measuring perceptual quality. Finally, our experimental evaluation shows that our learning-based approach outperforms existing methods and that our region selection algorithm consistently improves the quality estimation.

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