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Titlebook: Computer Vision – ACCV 2022; 16th Asian Conferenc Lei Wang,Juergen Gall,Rama Chellappa Conference proceedings 2023 The Editor(s) (if applic

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DILane: Dynamic Instance-Aware Network for Lane Detectionefined fixed-position anchors, we define learnable anchors to perform statistics of potential lane locations. Second, we propose a dynamic head aiming at leveraging low-level texture information to conditionally enhance high-level semantic features for each proposed instance. Finally, we present a s
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CIRL: A Category-Instance Representation Learning Framework for Tropical Cyclone Intensity Estimatioloss is applied on top of the framework which can lead to a more uniform feature distribution. In addition, a non-parameter smoothing algorithm is proposed to aggregate temporal information from the image sequence. Extensive experiments demonstrate that our method, with the result of 7.35 knots at R
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Explaining Deep Neural Networks for Point Clouds Using Gradient-Based Visualisationsks, including ‘single object’ networks PointNet, PointNet++, DGCNN, and a ‘scene’ network VoteNet. Our method generates symmetric explanation maps that highlight important regions and provide insight into the decision-making process of network architectures. We perform an exhaustive evaluation of tr
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Improving Surveillance Object Detection with Adaptive Omni-Attention over Both Inter-frame and Intran reverse in both single-frame and multi-frame feature maps. The experimental results on the UA-DETRAC and the UAVDT datasets have demonstrated the promising performance of our proposed detector in both accuracy and speed. (Code is available at ..)
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RGB Road Scene Material Segmentationenging task. RMSNet encodes multi-scale hierarchical features with self-attention. We construct the decoder of RMSNet based on a novel lightweight self-attention model, which we refer to as .. SAMixer achieves adaptive fusion of informative texture and context cues across multiple feature levels. It
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