人类情感分类的音序器网络记忆电路设计

Xiaoyue Ji, Zhekang Dong, Han Wang, C. S. Lai, Donglian Qi
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引用次数: 0

摘要

心理健康问题是一个日益普遍的社会问题,会导致抑郁症、毒瘾和心脏病发作等疾病。面部表情是人类表达情绪状态和行为意图的最自然、最普遍的信号之一。人类情绪自动分类已经进行了大量的研究,可以有效地建立面部表情与心理健康之间的关系,但仍然存在计算量大、效率低的问题。在此,我们提出了一种用于人类情感分类的Sequencer网络的记忆电路设计,它提供了一种低成本和易于部署的硬件环境友好的方法。具体而言,利用二维材料制作了一种生态友好型忆阻器,并进行了相应的测试性能,以确保其效率和稳定性。然后,提出了基于忆阻器的音序器模块,作为音序器网络的核心组件,由双向长短期记忆(BiLSTM)电路和一些必要的功能电路模块组成。在此基础上,实现了记忆序列器网络。此外,将所提出的记忆序列网络应用于人类情感分类。实验结果表明,该电路在计算效率和成本方面具有优势,与现有的主要基于软件的方法相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Memristive Circuit Design of Sequencer Network for Human Emotion Classification
Mental health problem is an increasingly common social issue leading to diseases such as depression, addiction, and heart attack. Facial expression is one of the most natural and universal signals for human beings to convey their emotional states and behavior intentions. Numerous studies have been conducted on automatic human emotion classification that can effectively establish the relationship between facial expression and mental health, while still suffer from intensive computation and low efficiency. Here, we present a memristive circuit design of Sequencer network for human emotion classification, which offers an environmentally friendly approach with low cost and easily deployable hardware. Specifically, a kind of eco-friendly memristor is fabricated using two-dimensional (2D) materials, and the corresponding testing performance is conducted to make sure its efficiency and stability. Then, the memristor-based Sequencer block, as a core component of Sequencer network, consisting of bidirectional long short-term memory (BiLSTM) circuit and some necessary function circuit modules is proposed. Based on this, the memristive Sequencer network can be achieved. Furthermore, the proposed memristive Sequencer network is applied for human emotion classification. The experimental results demonstrate that the proposed circuit has advantages in computational efficiency and cost, comparable to the main existing software-based methods.
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