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.

VGent: Visual Grounding via Modular Design for Disentangling Reasoning and Prediction

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Dec 11, 2025
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Domain-Agnostic Causal-Aware Audio Transformer for Infant Cry Classification

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Dec 18, 2025
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RadarFuseNet: Complex-Valued Attention-Based Fusion of IQ Time- and Frequency-Domain Radar Features for Classification Tasks

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Dec 12, 2025
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Adaptive Dual-Weighted Gravitational Point Cloud Denoising Method

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Dec 11, 2025
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Predictive Concept Decoders: Training Scalable End-to-End Interpretability Assistants

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Dec 17, 2025
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NordFKB: a fine-grained benchmark dataset for geospatial AI in Norway

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Dec 10, 2025
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Attacking and Securing Community Detection: A Game-Theoretic Framework

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Dec 12, 2025
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An AI-Powered Autonomous Underwater System for Sea Exploration and Scientific Research

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Dec 08, 2025
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Automated Pollen Recognition in Optical and Holographic Microscopy Images

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Dec 09, 2025
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A Hierarchical, Model-Based System for High-Performance Humanoid Soccer

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Dec 10, 2025
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