Abdullah Aldwyish

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2papers

2 Papers

10.4CVMay 7
Look Beyond Saliency: Low-Attention Guided Dual Encoding for Video Semantic Search

Faisal Aljehrai, Mohammed A. Alkhrashi, Alreem Almuhrij et al.

Video semantic search in densely crowded scenes remains a challenging task due to visual encoders tendency to prioritize salient foreground regions while neglecting contextually important, background areas. We propose an Inverse Attention Embedding mechanism that explicitly captures and highlights these overlooked regions. By combining inverse attention embeddings with traditional visual embeddings, our method significantly enhances semantic retrieval performance without additional training. Initial experiments and ablation studies demonstrate promising improvements over existing approaches in recall for video semantic search in crowded environments.

CVOct 21, 2025
VelocityNet: Real-Time Crowd Anomaly Detection via Person-Specific Velocity Analysis

Fatima AlGhamdi, Omar Alharbi, Abdullah Aldwyish et al.

Detecting anomalies in crowded scenes is challenging due to severe inter-person occlusions and highly dynamic, context-dependent motion patterns. Existing approaches often struggle to adapt to varying crowd densities and lack interpretable anomaly indicators. To address these limitations, we introduce VelocityNet, a dual-pipeline framework that combines head detection and dense optical flow to extract person-specific velocities. Hierarchical clustering categorizes these velocities into semantic motion classes (halt, slow, normal, and fast), and a percentile-based anomaly scoring system measures deviations from learned normal patterns. Experiments demonstrate the effectiveness of our framework in real-time detection of diverse anomalous motion patterns within densely crowded environments.