Object Detection


Object detection is a computer vision task in which the goal is to detect and locate objects of interest in an image or video. The task involves identifying the position and boundaries of objects in an image, and classifying the objects into different categories. It forms a crucial part of vision recognition, alongside image classification and retrieval.

Point Cloud Feature Coding for Object Detection over an Error-Prone Cloud-Edge Collaborative System

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Mar 04, 2026
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Local-Global Prompt Learning via Sparse Optimal Transport

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Mar 09, 2026
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Geometry-Aware Semantic Reasoning for Training Free Video Anomaly Detection

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Mar 10, 2026
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ModalPatch: A Plug-and-Play Module for Robust Multi-Modal 3D Object Detection under Modality Drop

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Mar 03, 2026
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YCDa: YCbCr Decoupled Attention for Real-time Realistic Camouflaged Object Detection

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Mar 02, 2026
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Recognition of Daily Activities through Multi-Modal Deep Learning: A Video, Pose, and Object-Aware Approach for Ambient Assisted Living

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Mar 04, 2026
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Beyond Prompt Degradation: Prototype-guided Dual-pool Prompting for Incremental Object Detection

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Mar 02, 2026
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ForestPersons: A Large-Scale Dataset for Under-Canopy Missing Person Detection

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Mar 03, 2026
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When Visual Evidence is Ambiguous: Pareidolia as a Diagnostic Probe for Vision Models

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Mar 04, 2026
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Unifying Heterogeneous Multi-Modal Remote Sensing Detection Via Language-Pivoted Pretraining

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Mar 02, 2026
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