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arxiv 2203.14190 v1 pith:5OFJSUKG submitted 2022-03-27 eess.IV cs.CV

Deep Polarimetric HDR Reconstruction

classification eess.IV cs.CV
keywords reconstructionpolarimetricpolarizationcameradeepdphracquireddifferent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper proposes a novel learning based high-dynamic-range (HDR) reconstruction method using a polarization camera. We utilize a previous observation that polarization filters with different orientations can attenuate natural light differently, and we treat the multiple images acquired by the polarization camera as a set acquired under different exposure times, to introduce the development of solutions for the HDR reconstruction problem. We propose a deep HDR reconstruction framework with a feature masking mechanism that uses polarimetric cues available from the polarization camera, called Deep Polarimetric HDR Reconstruction (DPHR). The proposed DPHR obtains polarimetric information to propagate valid features through the network more effectively to regress the missing pixels. We demonstrate through both qualitative and quantitative evaluations that the proposed DPHR performs favorably than state-of-the-art HDR reconstruction algorithms.

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