On Study of 1D Depth Scans as an Alternative Feature for Human Pose Detection in a Sensor Network

J. Sensors Pub Date : 2022-08-13 DOI:10.1155/2022/2267107
Maryam S. Rasoulidanesh, S. Payandeh
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Abstract

Inspired by the notion of swarm robotics, sensing, and minimalism, in this paper, we study and analyze how a collection of only 1D depth scans can be used as a part of the minimum feature for human body detection and its segmentation in a point cloud. In relation to the traditional approaches which require a complete point cloud model representation for skeleton model reconstruction, our proposed approach offers a lower computation and power consumption, especially in sensor and robotic networks. Our main objective is to investigate if the reduced number of training data through a collection of 1D scans of a subject is related to the rate of recognition and if it can be used to accurately detect the human body and its posture. The method takes advantage of the frequency components of the depth images (here, we refer to it as a 1D scan). To coordinate a collection of these 1D scans obtained through a sensor network, we also proposed a sensor scheduling framework. The framework is evaluated using two stationary depth sensors and a mobile depth sensor. The performance of our method was analyzed through movements and posture details of a subject having two relative orientations with respect to the sensors with two classes of postures, namely, walking and standing. The novelty of the paper can be summarized in 3 main points. Firstly, unlike deep learning methods, our approach would require a smaller dataset for training. Secondly, our case studies show that the method uses very limited training dataset and still can detect the unseen situation and reasonably estimate the orientation and detail of the posture. Finally, we propose an online scheduler to improve the energy efficiency of the network sensor and minimize the number of sensors required for surveillance monitoring by employing a mobile sensor to recover the occluded views of the stationary sensors. We showed that with the training data captured on 1 m from the camera, the algorithm can detect the detailed posture of the subject from 1, 2, 3, and 4 meters away from the sensor during the walking and standing with average accuracy of 93% and for different orientation with respect to the sensor by 71% accuracy.
一维深度扫描作为传感器网络中人体姿态检测替代特征的研究
受群体机器人、传感和极简主义概念的启发,在本文中,我们研究和分析了如何将仅一维深度扫描的集合用作点云中人体检测及其分割的最小特征的一部分。传统方法需要完整的点云模型表示来进行骨架模型重建,与此相比,我们提出的方法具有更低的计算量和功耗,特别是在传感器和机器人网络中。我们的主要目标是研究通过收集一个对象的一维扫描来减少训练数据的数量是否与识别率有关,以及它是否可以用于准确检测人体及其姿势。该方法利用了深度图像的频率分量(在这里,我们称之为一维扫描)。为了协调通过传感器网络获得的这些1D扫描的集合,我们还提出了一个传感器调度框架。使用两个固定深度传感器和一个移动深度传感器对该框架进行了评估。通过对具有行走和站立两类姿态传感器的具有两个相对方向的受试者的运动和姿态细节来分析我们的方法的性能。本文的新颖性可以概括为三点。首先,与深度学习方法不同,我们的方法需要更小的数据集进行训练。其次,我们的案例研究表明,该方法使用非常有限的训练数据集,仍然可以检测到看不见的情况,并合理地估计姿态的方向和细节。最后,我们提出了一个在线调度程序,以提高网络传感器的能量效率,并通过使用移动传感器来恢复固定传感器的遮挡视图,从而最大限度地减少监视监测所需的传感器数量。我们的研究表明,在距离相机1 m的训练数据中,该算法可以在距离传感器1米、2米、3米和4米的地方检测被测者在行走和站立过程中的详细姿态,平均准确率为93%,相对于传感器不同方向的准确率为71%。
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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