IEEE/ACM Trans Comput Biol Bioinform. 2021 Nov-Dec;18(6):2218-2229. doi: 10.1109/TCBB.2020.2974944. Epub 2021 Dec 8.
Biological long short-term memory (B-LSTM) can effectively help human process all kinds of received information. In this work, a memristive B-LSTM circuit which mimics a conversion from short-term memory to long-term memory is proposed. That is, the stronger the signal, the more profound the memory and the higher the output. On this basis, an image binarization circuit using adaptive row threshold algorithm is proposed. It can make the image remain a deep impression on the strong pixel information and effectively filter the relatively weak pixel information. In combination with the function of image binarization, a memristive circuit for eyes state detection is proposed by adding corresponding horizontal projection calculation, subtraction calculation and judgement open or closed eyes modules. The proposed circuit can detect whether there is a blink between two adjacent facial images, which uses the characteristics of memristor to detect the difference of horizontal projection between two images. Due to the use of memristor, the proposed circuit can realize in-memory computing, which fundamentally avoids the problem of storage wall and shorten the execution time. Finally, an expectation application in fatigue driving based on the proposed method is demonstrated, which indicates the practicability of the circuit design in this work.
生物的长短时记忆(B-LSTM)可以有效地帮助人类处理各种接收到的信息。在这项工作中,提出了一种忆阻 B-LSTM 电路,该电路模拟了从短期记忆到长期记忆的转换。也就是说,信号越强,记忆越深刻,输出越高。在此基础上,提出了一种使用自适应行阈值算法的图像二值化电路。它可以使图像对强像素信息保持深刻的印象,并有效地滤除相对较弱的像素信息。结合图像二值化的功能,通过添加相应的水平投影计算、减法计算和判断开眼或闭眼模块,提出了一种用于眼睛状态检测的忆阻电路。该电路可以检测两个相邻面部图像之间是否存在眨眼,它利用忆阻器检测两个图像之间水平投影的差异的特性。由于使用了忆阻器,所提出的电路可以实现内存计算,从根本上避免了存储墙的问题,并缩短了执行时间。最后,基于所提出的方法展示了在疲劳驾驶中的预期应用,这表明了该电路设计在实际中的实用性。