A cognitive approach to predict the multi-directional trajectory of pedestrians

Jayachitra Virupakshipuram Panneerselvam, Bharanidharan Subramaniam, Mathangi Meenakshisundaram
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Abstract

Pedestrian detection is one of the important areas in computer vision. This work is about detecting the multi-directional pedestrian’s left, right, and the front movements. On recognizing the direction of movement, the system can be alerted depending on the environmental circumstances. Since multiple pedestrians moving in different directions may be present in a single image, Convolutional Neural Network (CNN) is not suitable for recognizing the multi-directional movement of the pedestrians. Moreover, the Faster R-CNN (FR-CNN) gives faster response output compared to other detection algorithms. In this work, a modified Faster Recurrent Convolutional Neural Network (MFR-CNN), a cognitive approach is proposed for detecting the direction of movement of the pedestrians and it can be deployed in real-time. A fine-tuning of the convolutional layers is performed to extract more information about the image contained in the feature map. The anchors used in the detection process are modified to focus the pedestrians present within a range, which is the major concern for such automated systems. The proposed model reduced the execution time and obtained an accuracy of 88%. The experimental evaluation indicates that the proposed novel model can outperform the other methods by tagging each pedestrian individually in the direction in which they move.
一种预测行人多向轨迹的认知方法
行人检测是计算机视觉研究的重要领域之一。这项工作是关于检测多向行人的左,右和前运动。在识别运动方向后,系统可以根据环境情况发出警报。由于单幅图像中可能存在多个不同方向的行人,卷积神经网络(CNN)不适合用于识别行人的多向运动。此外,与其他检测算法相比,更快的R-CNN (FR-CNN)给出了更快的响应输出。在这项工作中,提出了一种改进的快速循环卷积神经网络(MFR-CNN),一种用于检测行人运动方向的认知方法,并且可以实时部署。对卷积层进行微调,以提取有关特征映射中包含的图像的更多信息。检测过程中使用的锚被修改以聚焦在一定范围内的行人,这是此类自动化系统的主要关注点。该模型减少了执行时间,获得了88%的准确率。实验结果表明,该模型可以根据行人的移动方向对其进行单独标记,从而优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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