Weapon D - A Hybrid Approach for Detecting Weapons in Dark Environments Using Deep Learning Techniques

R. Aditya, P. Y. Raj, Y. T. Rao, T. H. V. Sai, A. Lakshman, K. T. Devi
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Abstract

Weapon detection, a crucial part of modern security is vital for public safety and strengthening security measures. Accurately spotting weapons in different places helps law enforcement, surveillance, and security. The ongoing improvements in weapon detection technologies not only boost preventive actions but also help respond quickly in emergencies, reducing risks and improving readiness. These technologies greatly assist law enforcement in identifying threats early and taking action promptly to keep the public safe and protect important places. Our proposed system suggests YOLOv7 with brightening algorithms, specially designed to detect weapons in low-light or nighttime situations. This shift from the existing to the proposed system marks a substantial improvement, addressing the challenges of nighttime weapon detection. This breakthrough not only enhances the scope of security measures but also underscores the adaptability of technology to real-world challenges. By catering to challenging dark settings, this advancement strengthens the foundation of public safety initiatives, offering a proactive approach to mitigating potential threats in diverse environments.
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武器 D - 利用深度学习技术在黑暗环境中检测武器的混合方法
武器探测是现代安全的重要组成部分,对公共安全和加强安全措施至关重要。准确发现不同地点的武器有助于执法、监控和安全。武器探测技术的不断改进不仅能促进预防行动,还有助于在紧急情况下快速做出反应,降低风险并提高战备状态。这些技术大大有助于执法部门及早发现威胁并迅速采取行动,以保障公众安全和保护重要场所。我们提出的系统建议 YOLOv7 采用增亮算法,专门用于在弱光或夜间环境下检测武器。从现有系统到拟议系统的转变标志着一项重大改进,解决了夜间武器检测的难题。这一突破不仅扩大了安全措施的范围,而且突出了技术对现实世界挑战的适应性。通过应对具有挑战性的黑暗环境,这一进步加强了公共安全举措的基础,为在不同环境中减轻潜在威胁提供了一种积极主动的方法。
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