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Auteurs principaux: Zheng, Chaobing, Xu, Yilun, Chen, Weihai, Wu, Shiqian, Zhang, Sen, Li, Zhengguo
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2409.04679
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author Zheng, Chaobing
Xu, Yilun
Chen, Weihai
Wu, Shiqian
Zhang, Sen
Li, Zhengguo
author_facet Zheng, Chaobing
Xu, Yilun
Chen, Weihai
Wu, Shiqian
Zhang, Sen
Li, Zhengguo
contents Due to saturated regions of inputting low dynamic range (LDR) images and large intensity changes among the LDR images caused by different exposures, it is challenging to produce an information enriched panoramic LDR image without visual artifacts for a high dynamic range (HDR) scene through stitching multiple geometrically synchronized LDR images with different exposures and pairwise overlapping fields of views (OFOVs). Fortunately, the stitching of such images is innately a perfect scenario for the fusion of a physics-driven approach and a data-driven approach due to their OFOVs. Based on this new insight, a novel neural augmentation based panoramic HDR stitching algorithm is proposed in this paper. The physics-driven approach is built up using the OFOVs. Different exposed images of each view are initially generated by using the physics-driven approach, are then refined by a data-driven approach, and are finally used to produce panoramic LDR images with different exposures. All the panoramic LDR images with different exposures are combined together via a multi-scale exposure fusion algorithm to produce the final panoramic LDR image. Experimental results demonstrate the proposed algorithm outperforms existing panoramic stitching algorithms.
format Preprint
id arxiv_https___arxiv_org_abs_2409_04679
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Neural Augmentation Based Panoramic High Dynamic Range Stitching
Zheng, Chaobing
Xu, Yilun
Chen, Weihai
Wu, Shiqian
Zhang, Sen
Li, Zhengguo
Computer Vision and Pattern Recognition
Due to saturated regions of inputting low dynamic range (LDR) images and large intensity changes among the LDR images caused by different exposures, it is challenging to produce an information enriched panoramic LDR image without visual artifacts for a high dynamic range (HDR) scene through stitching multiple geometrically synchronized LDR images with different exposures and pairwise overlapping fields of views (OFOVs). Fortunately, the stitching of such images is innately a perfect scenario for the fusion of a physics-driven approach and a data-driven approach due to their OFOVs. Based on this new insight, a novel neural augmentation based panoramic HDR stitching algorithm is proposed in this paper. The physics-driven approach is built up using the OFOVs. Different exposed images of each view are initially generated by using the physics-driven approach, are then refined by a data-driven approach, and are finally used to produce panoramic LDR images with different exposures. All the panoramic LDR images with different exposures are combined together via a multi-scale exposure fusion algorithm to produce the final panoramic LDR image. Experimental results demonstrate the proposed algorithm outperforms existing panoramic stitching algorithms.
title Neural Augmentation Based Panoramic High Dynamic Range Stitching
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2409.04679