DETERMINATION AND COMPARISON METHODS OF BODY POSITIONS ON STREAM VIDEO

IF 0.2 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Radio Electronics Computer Science Control Pub Date : 2023-06-29 DOI:10.15588/1607-3274-2023-2-6
N. Bilous, I. Ahekian, V. V. Kaluhin
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Abstract

Context. One of the tasks of computer vision is the task of determining the human body in the image. There are many methods to solve this problem, some are based on specific equipment (motion capture, kinect) and provide the highest accuracy, some give less accuracy but do not require additional equipment and use less computing power. But usually, such equipment has a high cost, so to ensure the low cost of developments designed to determine the body in the image, you should develop algorithms based on computer vision technology. These algorithms can then be applied to various fields to analyze and compare body positions for a variety of purposes. Objective. The aim of the work is to study the effectiveness of existing libraries to determine the human body position in the image, as well as methods for comparing the obtained poses in terms of speed and accuracy of determination. Methods. A set of libraries and pose comparison algorithms were analyzed for the purpose of developing a system for determining the correctness of exercise by the user in real time. OpenPose, PoseNet and BlazePose libraries were analyzed for their suitability in recognizing and tracking body parts and movements in real-time video streams. The advantages and disadvantages of each library were evaluated based on their performance, accuracy, and computational efficiency. Additionally, different pose comparison algorithms were analyzed. The effectiveness of each algorithm was evaluated based on their ability to accurately determine and compare body positions. As a result, the combination of BlazePose and weighted distance method can achieve the best performance in pose recognition, with high accuracy and robustness across a range of challenging scenarios. The weighted distance method can be further enhanced with techniques such as L2 normalization and pose alignment to improve its accuracy and generalization. Overall, the combination of the BlazePose library and weighted distance methods offers a powerful and effective solution for pose recognition, with high F1 index. Results. Existing models for determining poses have shown similar results in the quality of determination with a run-up of about 2%. When developing a cross-platform software product, the BlazePose library, which has an API for working directly in the browser and on mobile platforms, has a significant advantage in speed and accuracy. Also, as the library uses extended 33 keypoint topology it becomes applicable to a wider list of tasks. In the study of comparison methods, the greatest influence on the results was exerted by the quality of pose determination. Conclusions. Among the methods of comparison, the method of weighted distances showed the best results. The speed of position determination is inversely proportional to the quality of determination and significantly exceeds the recommended value – 40ms.
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流视频中身体位置的确定与比较方法
上下文。计算机视觉的任务之一是确定图像中的人体。有许多方法可以解决这个问题,有些是基于特定的设备(动作捕捉,kinect),并提供最高的精度,有些准确度较低,但不需要额外的设备,使用更少的计算能力。但通常情况下,这样的设备成本很高,所以为了保证低成本的开发设计来确定图像中的人体,就应该开发基于计算机视觉技术的算法。然后,这些算法可以应用于各种领域,以分析和比较各种目的的身体位置。目标。这项工作的目的是研究现有库在图像中确定人体位置的有效性,以及在确定速度和准确性方面比较获得的姿势的方法。方法。为了开发一个实时判断用户运动正确性的系统,分析了一套库和姿态比较算法。分析了OpenPose、PoseNet和BlazePose库在识别和跟踪实时视频流中的身体部位和运动方面的适用性。基于它们的性能、准确性和计算效率评估了每个库的优缺点。此外,还分析了不同的姿态比较算法。每个算法的有效性都是基于它们准确确定和比较身体位置的能力来评估的。因此,结合BlazePose和加权距离方法可以在姿态识别中获得最佳性能,在一系列具有挑战性的场景中具有较高的准确性和鲁棒性。加权距离方法可以通过L2归一化和位姿对齐等技术进一步增强,以提高其精度和泛化程度。总体而言,结合BlazePose库和加权距离方法为姿态识别提供了一个强大而有效的解决方案,具有很高的F1指数。结果。现有的确定姿势的模型在确定质量方面也显示出类似的结果,误差约为2%。在开发跨平台软件产品时,BlazePose库具有直接在浏览器和移动平台上工作的API,在速度和准确性方面具有显着的优势。此外,由于该库使用扩展的33个关键点拓扑,因此它适用于更广泛的任务列表。在比较方法的研究中,位姿确定的质量对结果的影响最大。结论。在比较方法中,加权距离法的效果最好。位置确定的速度与确定的质量成反比,明显超过推荐值- 40ms。
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来源期刊
Radio Electronics Computer Science Control
Radio Electronics Computer Science Control COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-
自引率
20.00%
发文量
66
审稿时长
12 weeks
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