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Multitask AET with Orthogonal Tangent Regularity for Dark Object Detection

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arxiv 2205.03346 v1 pith:GEU3CXWG submitted 2022-05-06 cs.CV

Multitask AET with Orthogonal Tangent Regularity for Dark Object Detection

classification cs.CV
keywords detectionobjectmaetdarkmultitaskalongdatasetsdecoding
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Dark environment becomes a challenge for computer vision algorithms owing to insufficient photons and undesirable noise. To enhance object detection in a dark environment, we propose a novel multitask auto encoding transformation (MAET) model which is able to explore the intrinsic pattern behind illumination translation. In a self-supervision manner, the MAET learns the intrinsic visual structure by encoding and decoding the realistic illumination-degrading transformation considering the physical noise model and image signal processing (ISP). Based on this representation, we achieve the object detection task by decoding the bounding box coordinates and classes. To avoid the over-entanglement of two tasks, our MAET disentangles the object and degrading features by imposing an orthogonal tangent regularity. This forms a parametric manifold along which multitask predictions can be geometrically formulated by maximizing the orthogonality between the tangents along the outputs of respective tasks. Our framework can be implemented based on the mainstream object detection architecture and directly trained end-to-end using normal target detection datasets, such as VOC and COCO. We have achieved the state-of-the-art performance using synthetic and real-world datasets. Code is available at https://github.com/cuiziteng/MAET.

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