基于更快R-CNN检测的年龄和性别人群计数

Junaid Hussain Muzamal, Zeeshan Tariq, Usman Ghani Khan
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引用次数: 2

摘要

每天都有大批民众聚集在朝觐、表演、马拉松、纪念日、纪念活动、庆祝活动、政治活动、抗议活动和购物中心等活动中。人群场所的视觉理解是计算机视觉的一个新兴领域。根据人群中的性别和年龄对人群进行统计是一项棘手的工作,但它在监督、管理和规划方面具有广泛的适用性。人数统计对于衡量抗议和其他不受欢迎的集会的政治价值也至关重要。在这项工作中,我们提出了一种创新的技术来解决视觉框架中人群计数、性别再殖民化、年龄估计和人物定位的挑战。更快的R-CNN被训练来同时解决这四个问题。由于定位任务涉及高质量帧的注释,我们引入了CVML-OCC数据集,可用于研究社区和非商业用途,从而消除了现有数据集的局限性。此外,我们还提供评估程序和与现有方法的全面比较。我们的方法比使用CVML-OCC数据集训练集的最先进的模块表现得更好,CVML-OCC数据集是一个在不同场景下具有精确注释的综合数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crowd Counting with respect to Age and Gender by using Faster R-CNN based Detection
Masses gather on a daily basis in events like hajjs, shows, marathons, anniversaries, memorials, festivities, political events, protests and shopping malls. Visual understanding of crowd places is an emerging field in computer vision. Counting the people, based on gender, and estimation of their age in crowd is a tricky job but it has extensive applicability in surveillance, management and planning. Crowd counting is also vital to measure political worth of protests and other unwanted gatherings. In this work, we propose an innovative technique to solve the challenges of crowd counting, gender recolonization, age estimation and localization of people in visual frames. Faster R-CNN is trained to solve these four problems simultaneously. As the task of localization involves the annotations of high-quality frames, we introduce CVML-OCC dataset11Available for research community and non-commercial usage that incapacitates the limitations of already available datasets. Alongside, we provide evaluation procedures and comprehensive comparison with existing approaches. Our method expressively performs better than state-of-the-art modules with the training set of CVML-OCC dataset, which is a comprehensive dataset having precise annotations in diverse scenarios.
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