Convolutional neural network on embedded system

Author(s):  
Felipe de Almeida Florencio ◽  
Edward David Moreno
2020 ◽  
Vol 20 (15) ◽  
pp. 8287-8296 ◽  
Author(s):  
Siliang Lu ◽  
Gang Qian ◽  
Qingbo He ◽  
Fang Liu ◽  
Yongbin Liu ◽  
...  

2019 ◽  
Vol 16 (6) ◽  
pp. 7982-7994
Author(s):  
Siyu Chen ◽  
◽  
Yin Zhang ◽  
Yuhang Zhang ◽  
Jiajia Yu ◽  
...  

Sensors ◽  
2022 ◽  
Vol 22 (1) ◽  
pp. 348
Author(s):  
Francisco de Melo ◽  
Horácio C. Neto ◽  
Hugo Plácido da Silva

Biometric identification systems are a fundamental building block of modern security. However, conventional biometric methods cannot easily cope with their intrinsic security liabilities, as they can be affected by environmental factors, can be easily “fooled” by artificial replicas, among other caveats. This has lead researchers to explore other modalities, in particular based on physiological signals. Electrocardiography (ECG) has seen a growing interest, and many ECG-enabled security identification devices have been proposed in recent years, as electrocardiography signals are, in particular, a very appealing solution for today’s demanding security systems—mainly due to the intrinsic aliveness detection advantages. These Electrocardiography (ECG)-enabled devices often need to meet small size, low throughput, and power constraints (e.g., battery-powered), thus needing to be both resource and energy-efficient. However, to date little attention has been given to the computational performance, in particular targeting the deployment with edge processing in limited resource devices. As such, this work proposes an implementation of an Artificial Intelligence (AI)-enabled ECG-based identification embedded system, composed of a RISC-V based System-on-a-Chip (SoC). A Binary Convolutional Neural Network (BCNN) was implemented in our SoC’s hardware accelerator that, when compared to a software implementation of a conventional, non-binarized, Convolutional Neural Network (CNN) version of our network, achieves a 176,270× speedup, arguably outperforming all the current state-of-the-art CNN-based ECG identification methods.


2020 ◽  
Vol 63 (6) ◽  
pp. 2029-2038
Author(s):  
Chen-Yi Lin ◽  
Kuang-Wen Hsieh ◽  
Yao-Chuan Tsai ◽  
Yan-Fu Kuo

HighlightsA customized embedded system was built to acquire images of a chicken coop.Faster R-CNN was used to localize the chickens in the images.The accuracies in chicken detection and tracking were 98.16% and 98.94%, respectively.Movement and drinking time of chickens were quantified.Abstract. Poultry and eggs are major sources of dietary protein worldwide. Because Taiwan is located in tropical and subtropical regions, heat stress in chickens is one of the most challenging concerns of the poultry industry in Taiwan. Typical heat stress symptoms in chickens are reduced movement and increased drinking time. The level of heat stress is conventionally evaluated using the temperature-humidity index (THI) or through manual observation. However, THI is indirect, and manual observation is subjective and time-consuming. This study proposes to directly monitor the movement and drinking time of chickens using time-lapse images and deep learning algorithms. In this study, an experimental coop was constructed to house ten chickens. An embedded system was then designed to acquire images of the chickens at a rate of 1 frame s-1 and to measure the temperature and humidity of the coop. A faster region-based convolutional neural network was then trained on a personal computer to detect and localize the chickens in the images. The movement and drinking time of the chickens under various THI values were then analyzed. The proposed method provided 98.16% chicken detection accuracy and 98.94% chicken tracking accuracy. Keywords: Chicken activities, Embedded system, Faster region-based convolutional neural network, Faster R-CNN, Heat stress, Temperature-humidity index (THI).


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