Pedestrian Direction Estimation: An Approach via Perspective Distortion Patterns

Sukesh Babu V S, Rahul Raman
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Abstract

Knowledge of pedestrian's walking direction is very crucial in multiple domains of video processing. This paper proposes a graph based, robust and light weighted model for direction estimation of pedestrian's walk by using the property of perspective distortion. Here perspective distortion pattern is used as an advantage in estimation of direction. The graph-based solution uses 3 parallel approaches for estimating the direction: Perspective Distortion Graph, Centroid Displacement and Clustering of Vanishing point. A pedestrian in a frame can be identified by bounding boxes. The temporal dimensional features of bounding boxes are height and width and these features changes for a particular object from frame to frame as the objects moves. These changes are unique for each direction for each object. These changes in dimension along with clustering of vanishing point and centroid displacement is used for the assesment of the pedestrian's walk direction. All the existing approaches need some sort of pre-processing on the frames, which makes the model more complex and time consuming. In the proposed model, the video sequence is applied on YOLO V4 algorithm and bounding boxes are obtained. By analysing the changes from frame to frame for the dimensions, graphs are plotted and minimum and maximum extremas are detected form the graph by eliminating soft extremas. After that envelope is placed for the graph and an average line is drawn based on the envelope, which will give the inference about the direction of walk of the pedestrian. The perspective distortion graph will not give accurate estimation for all directions. So, Centroid displacement and clustering of vanishing point are also used for direction estimation. The result obtained from the three methods are combined and form a robust model. For accurately estimating walk direction, the movement is limited to 8 different directions. For experiment, NITR Conscious Walk dataset and self-acquired dataset are used. With balanced accuracy of 97.003% and 96.25% and a false positive rate of 0.63% and 0.65%, respectively, the model produces good results for the above dataset.
行人方向估计:一种基于视角失真模式的方法
行人的行走方向信息在视频处理的多个领域中都是至关重要的。本文利用透视失真的特性,提出了一种基于图的、鲁棒的、轻权重的行人行走方向估计模型。在这里,透视畸变模式被用作方向估计的优势。基于图的解决方案使用3种并行方法来估计方向:透视失真图、质心位移和消失点聚类。框架中的行人可以通过边界框来识别。边界框的时间维度特征是高度和宽度,随着对象的移动,这些特征会随着特定对象在不同帧之间的移动而变化。这些变化对于每个对象的每个方向都是唯一的。这些维数的变化以及消失点的聚类和质心位移用于行人行走方向的评估。现有的方法都需要对帧进行预处理,这使得模型更加复杂和耗时。在该模型中,将视频序列应用于YOLO V4算法,得到边界框。通过分析各帧之间的维数变化,绘制图形,并通过消除软极值来检测图形的最小和最大极值。然后为图形设置包络,并根据包络绘制一条平均线,从而推断出行人的行走方向。透视畸变图不能对所有方向给出准确的估计。因此,还使用质心位移和消失点聚类进行方向估计。将三种方法得到的结果结合起来,形成一个鲁棒模型。为了准确估计行走方向,运动被限制在8个不同的方向。实验使用了NITR有意识行走数据集和自获取数据集。该模型的平衡准确率分别为97.003%和96.25%,假阳性率分别为0.63%和0.65%,对上述数据集产生了良好的效果。
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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