利用级联对象检测优化实时人员计数的准确性和效率

M. Raviraja Holla, D. Suma, M. Darshan Holla
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引用次数: 0

摘要

人们对公共安全的日益关注推动了对实时监控的需求,尤其是对人员计数器等监控系统的需求。由于面部特征的复杂性,严重依赖面部检测的传统方法面临着挑战。本文介绍了一种创新的人员计数系统,该系统以其稳健性著称,利用整体身体特征改进检测和计数。该系统通过先进的计算机视觉技术实现了卓越的性能,在理想条件下准确率和精确率均达到 100%。即使在极具挑战性的视觉条件下,它也能保持令人印象深刻的 98.42% 的总体准确率和 97.51% 的精确率。包括小提琴图和热图在内的综合分析为这一出色性能提供了支持。此外,通过评估与级联阶段数量相关的准确度和执行时间,我们突出强调了我们方法的显著优势。使用 TUD 行人数据集进行的实验表明,准确率达到 94.2%。使用 UCFCC 数据集进行的评估进一步证明了我们的方法在处理不同场景时的有效性,展示了它在现实世界人群计数应用中的稳健性。与基准方法相比,我们提出的系统具有实时精度和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimizing accuracy and efficiency in real-time people counting with cascaded object detection

Optimizing accuracy and efficiency in real-time people counting with cascaded object detection

Growing concerns about public safety have driven the demand for real-time surveillance, particularly in monitoring systems like people counters. Traditional methods heavily reliant on facial detection face challenges due to the complex nature of facial features. This paper presents an innovative people counting system known for its robustness, utilizing holistic bodily characteristics for improved detection and tallying. This system achieves exceptional performance through advanced computer vision techniques, with a flawless accuracy and precision rate of 100% under ideal conditions. Even in challenging visual conditions, it maintains an impressive overall accuracy of 98.42% and a precision of 97.51%. Comprehensive analyses, including violin plot and heatmaps, support this outstanding performance. Additionally, by assessing accuracy and execution time concerning the number of cascading stages, we highlight the significant advantages of our approach. Experimentation with the TUD-Pedestrian dataset demonstrates an accuracy of 94.2%. Evaluation using the UCFCC dataset further proves the effectiveness of our approach in handling diverse scenarios, showcasing its robustness in real-world crowd counting applications. Compared to benchmark approaches, our proposed system demonstrates real-time precision and efficiency.

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