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.

Leveraging Previous-Traversal Point Cloud Map Priors for Camera-Based 3D Object Detection and Tracking

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Apr 28, 2026
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Robust Graph Matching through Semantic Relationship Generation for SLAM

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Apr 28, 2026
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Quantum-Inspired Robust and Scalable SAR Object Classification

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Apr 28, 2026
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No Pedestrian Left Behind: Real-Time Detection and Tracking of Vulnerable Road Users for Adaptive Traffic Signal Control

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Apr 28, 2026
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Hard to See, Hard to Label: Generative and Symbolic Acquisition for Subtle Visual Phenomena

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Apr 28, 2026
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SARU: A Shadow-Aware and Removal Unified Framework for Remote Sensing Images with New Benchmarks

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Apr 28, 2026
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Edge-Cloud Collaborative Reconstruction via Structure-Aware Latent Diffusion for Downstream Remote Sensing Perception

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Apr 28, 2026
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CLLAP: Contrastive Learning-based LiDAR-Augmented Pretraining for Enhanced Radar-Camera Fusion

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Apr 27, 2026
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JSSFF: A Joint Structural-Semantic Fusion Framework for Remote Sensing Image Captioning

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Apr 27, 2026
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Efficient Implementations of Extended Object PMBM Filters with Blocked Gibbs Sampling

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Apr 27, 2026
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