Multiple Object Detection on Surveillance Videos for Improving Accuracy Using Enhanced Faster R-CNN

Divya G, Manoj Kumar D S, Shri Bharathi SV
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Abstract

Computer vision is a dynamic and rapidly evolving field within the broader domain of artificial intelligence. Within surveillance monitoring systems, one of the central tasks is object detection, which involves identifying and localizing objects of interest in video sequences to provide safety and security of the people. Detection of multiple objects is a challenging task in video sequences which interprets less accuracy and false Bounding box regression. In this paper, enhanced faster R-CNN model is proposed and trained to compute regional proposal through Convolutional layers on the different scene of the sequences in term of lighting, motion capture related to spatial analysis. These enhancements could encompass architectural improvements, novel training strategies, or the incorporation of additional data sources to improve the model's overall performance. Proposed model is experimented on pedestrian video gives an improved accuracy detection rate than single detector techniques.
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基于增强型更快R-CNN的监控视频多目标检测提高精度
计算机视觉是人工智能领域中一个动态的、快速发展的领域。在监视监控系统中,中心任务之一是目标检测,它涉及识别和定位视频序列中感兴趣的对象,以提供人们的安全和保障。在视频序列中,多目标检测是一项具有挑战性的任务,其解释精度较低,并且存在假边界盒回归。本文提出并训练了增强的更快的R-CNN模型,通过卷积层对序列的不同场景进行光照、动作捕捉、空间分析等方面的区域建议计算。这些增强可以包括架构改进、新的训练策略,或者合并额外的数据源来改进模型的整体性能。在行人视频上进行了实验,结果表明该模型比单检测器技术具有更高的检测准确率。
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