CVAICYLGSep 17, 2023

Detection and Localization of Firearm Carriers in Complex Scenes for Improved Safety Measures

arXiv:2309.09236v12 citationsh-index: 32
Originality Incremental advance
AI Analysis

This work addresses security and surveillance needs by improving firearm detection in cluttered environments, though it is incremental as it builds on existing human-object interaction methods.

The paper tackled the problem of detecting and localizing firearm carriers in complex scenes by leveraging human-firearm interaction information with attention mechanisms and saliency-driven constraints, achieving an AP of 77.8% compared to a baseline of 63.1% on a new dataset.

Detecting firearms and accurately localizing individuals carrying them in images or videos is of paramount importance in security, surveillance, and content customization. However, this task presents significant challenges in complex environments due to clutter and the diverse shapes of firearms. To address this problem, we propose a novel approach that leverages human-firearm interaction information, which provides valuable clues for localizing firearm carriers. Our approach incorporates an attention mechanism that effectively distinguishes humans and firearms from the background by focusing on relevant areas. Additionally, we introduce a saliency-driven locality-preserving constraint to learn essential features while preserving foreground information in the input image. By combining these components, our approach achieves exceptional results on a newly proposed dataset. To handle inputs of varying sizes, we pass paired human-firearm instances with attention masks as channels through a deep network for feature computation, utilizing an adaptive average pooling layer. We extensively evaluate our approach against existing methods in human-object interaction detection and achieve significant results (AP=77.8\%) compared to the baseline approach (AP=63.1\%). This demonstrates the effectiveness of leveraging attention mechanisms and saliency-driven locality preservation for accurate human-firearm interaction detection. Our findings contribute to advancing the fields of security and surveillance, enabling more efficient firearm localization and identification in diverse scenarios.

Foundations

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