通过降低计算复杂度来提高健身练习重复计数器的性能

Youssef Fayad, M. Mostafa, Hossam Reda, K. Saad, M. Mohamed
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引用次数: 0

摘要

COVID-19的预防措施迫使我们寻找不同的技术,使我们的日常生活活动,特别是体育活动能够连续性。此外,对准确、快速的自动判断技术的需求也在不断涌现。具有多分辨率计数器的人工智能(AI)已经引入了依靠人工智能来实现这一目的的方法,但这种方法具有较高的处理时间。修改算法结构和输入特征可以降低计算成本。本文提出了一种改进的算法,该算法通过两种技术降低了光流方程的计算成本;第一种方法是通过选择更接近中心像素的权重更大的像素,对比之前模型少的像素数执行Gunner Franeback算法;第二种方法是采用模型量化技术,使用Tensor flow Lite作为提出的模型。实验结果表明,该方法计算成本低,可靠性好,鲁棒性好,可用于实际应用。通过将其时间复杂度与基于地面真值数据的多分辨率计数器人工智能进行比较,验证了实验的性能。的复杂性。
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Improving Performance of the Fitness Exercises Repetitions Counter via Computational Complexity Reduction
: The COVID-19 precautions had forced us to look for different techniques that enable the continuity of our ordinary life activities, especially the sports ones. In addition, the need for accurate and fast auto judgment techniques to measure physical fitness performance is constantly emerging. The artificial intelligence (AI) with multi-resolution counter had introduced method relays on Artificial Intelligence to realize this purpose, but this method has a high processing time. Modifying the algorithm structure and the inputs features leads to low computational cost. This paper presents a modified algorithm that reduces the computational costs for the optical flow equation This reduction is executed via two techniques; the first one is to execute Gunner Franeback algorithm for number of pixels less than had been used in the previous model via selecting the more weighted pixels that closer to the central pixel, the second one is to employ Model Quantization technique by using Tensor flow Lite as a proposed model. Experimental results indicate that the proposed method has low computational cost, reliable and robust, and can be applied as practical applications. The performance of the experiments was verified by comparing its time complexity with the AI with multi-resolution counter depending on ground truth data. complexity.
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期刊介绍: The International Journal of Interdisciplinary Telecommunications and Networking (IJITN) examines timely and important telecommunications and networking issues, problems, and solutions from a multidimensional, interdisciplinary perspective for researchers and practitioners. IJITN emphasizes the cross-disciplinary viewpoints of electrical engineering, computer science, information technology, operations research, business administration, economics, sociology, and law. The journal publishes theoretical and empirical research findings, case studies, and surveys, as well as the opinions of leaders and experts in the field. The journal''s coverage of telecommunications and networking is broad, ranging from cutting edge research to practical implementations. Published articles must be from an interdisciplinary, rather than a narrow, discipline-specific viewpoint. The context may be industry-wide, organizational, individual user, or societal. Topics Covered: -Emerging telecommunications and networking technologies -Global telecommunications industry business modeling and analysis -Network management and security -New telecommunications applications, products, and services -Social and societal aspects of telecommunications and networking -Standards and standardization issues for telecommunications and networking -Strategic telecommunications management -Telecommunications and networking cultural issues and education -Telecommunications and networking hardware and software design -Telecommunications investments and new ventures -Telecommunications network modeling and design -Telecommunications regulation and policy issues -Telecommunications systems economics
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