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.

From Correlation to Cause: A Five-Stage Methodology for Feature Analysis in Transformer Language Models

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May 21, 2026
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UniRefiner: Teaching Pre-trained ViTs to Self-Dispose Dross via Contrastive Register

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May 19, 2026
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Towards Accurate Single Panoramic 3D Detection: A Semantic Gaussian Centric Approach

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May 14, 2026
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Segment Anything with Motion, Geometry, and Semantic Adaptation for Complex Nonlinear Visual Object Tracking

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May 21, 2026
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Characterizing the visual representation of objects from the child's view

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May 14, 2026
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XWOD: A Real-World Benchmark for Object Detection under Extreme Weather Conditions

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May 12, 2026
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Quantifying the Pre-training Dividend: Generative versus Latent Self-Supervised Learning for Time Series Foundation Models

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May 19, 2026
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ERPPO: Entropy Regularization-based Proximal Policy Optimization

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May 13, 2026
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WD-FQDet: Multispectral Detection Transformer via Wavelet Decomposition and Frequency-aware Query Learning

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May 13, 2026
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A Data Efficiency Study of Synthetic Fog for Object Detection Using the Clear2Fog Pipeline

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May 12, 2026
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