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Real-Time Digital Signal Processing Based on FPGAs for Electronic Skin Implementation ?

机译:用于电子皮肤实现的基于FPGA的实时数字信号处理?

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Enabling touch-sensing capability would help appliances understand interaction behaviors with their surroundings. Many recent studies are focusing on the development of electronic skin because of its necessity in various application domains, namely autonomous artificial intelligence (e.g., robots), biomedical instrumentation, and replacement prosthetic devices. An essential task of the electronic skin system is to locally process the tactile data and send structured information either to mimic human skin or to respond to the application demands. The electronic skin must be fabricated together with an embedded electronic system which has the role of acquiring the tactile data, processing, and extracting structured information. On the other hand, processing tactile data requires efficient methods to extract meaningful information from raw sensor data. Machine learning represents an effective method for data analysis in many domains: it has recently demonstrated its effectiveness in processing tactile sensor data. In this framework, this paper presents the implementation of digital signal processing based on FPGAs for tactile data processing. It provides the implementation of a tensorial kernel function for a machine learning approach. Implementation results are assessed by highlighting the FPGA resource utilization and power consumption. Results demonstrate the feasibility of the proposed implementation when real-time classification of input touch modalities are targeted.
机译:启用触摸感应功能将帮助设备了解与周围环境的交互行为。由于电子皮肤在各种应用领域中的必要性,即自主人工智能(例如,机器人),生物医学仪器和置换假体设备,因此许多最近的研究集中在电子皮肤的开发上。电子皮肤系统的基本任务是本地处理触觉数据并发送结构化信息,以模仿人类皮肤或响应应用程序的需求。电子表皮必须与嵌入式电子系统一起制造,该嵌入式电子系统具有获取触觉数据,处理和提取结构化信息的作用。另一方面,处理触觉数据需要有效的方法来从原始传感器数据中提取有意义的信息。机器学习是在许多领域中进行数据分析的有效方法:最近它证明了其在处理触觉传感器数据中的有效性。在此框架中,本文介绍了基于FPGA的触觉数据处理的数字信号处理的实现。它为机器学习方法提供了张量内核函数的实现。通过重点介绍FPGA资源利用率和功耗来评估实现结果。结果证明了以输入触摸方式的实时分类为目标时提出的实施方案的可行性。

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