An FPGA-based hardware implementation of visual based fall detection

P. S. Ong, C. Ooi, Yoong Choon Chang, E. Karuppiah, S. M. Tahir
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引用次数: 6

Abstract

The independent living of the elderly population is very much of a concern and threaten due to their high tendency in falling. As the worldwide aging population grows tremendously, there is a need of reliable fall detection solution which operates in real-time at high accuracy and supports large scale implementation. Highly promising tool like Field Programmable Gate Array (FPGA) had been commonly used as a hardware accelerator in many emerging embedded vision based systems due to its high performance and low power consumption. As a result, it is the main objective of this work to propose a solution of FPGA-based visual based fall detection to meet the stringent real-time requirement. Our solution implemented in low-cost FPGA is able to achieve a performance of 58.36fps at VGA resolutions (640×480) through the exploitation of the parallel and pipeline architecture of FPGA. Besides, the optimization techniques that we proposed are able to reduce up to 33.33% of the dynamic power consumption of the system. The outputs of this work demonstrate the great impacts and potentials of FPGA's flexibility and scalability in the future healthcare industry.
基于fpga的视觉跌倒检测硬件实现
老年人口的独立生活因其较高的跌倒倾向而备受关注和威胁。随着全球老龄化人口的急剧增长,迫切需要一种实时、高精度、支持大规模实施的可靠的跌倒检测解决方案。现场可编程门阵列(FPGA)由于其高性能和低功耗的特点,在许多新兴的嵌入式视觉系统中被广泛用作硬件加速器。因此,提出一种基于fpga的基于视觉的跌倒检测解决方案以满足严格的实时性要求是本工作的主要目标。通过利用FPGA的并行和流水线架构,我们在低成本FPGA上实现的解决方案能够在VGA分辨率下实现58.36fps的性能(640×480)。此外,我们提出的优化技术能够降低系统的动态功耗高达33.33%。这项工作的结果证明了FPGA的灵活性和可扩展性在未来医疗保健行业的巨大影响和潜力。
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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