Abstract
AbstractProbabilistic inference in data-driven models is promising for predicting outputs and associated confidence levels, alleviating risks arising from overconfidence. However, implementing complex computations with minimal devices still remains challenging. Here, utilizing a heterojunction of p- and n-type semiconductors coupled with separate floating-gate configuration, a Gaussian-like memory transistor is proposed, where a programmable Gaussian-like current-voltage response is achieved within a single device. A separate floating-gate structure allows for exquisite control of the Gaussian-like current output to a significant extent through simple programming, with an over 10000 s retention performance and mechanical flexibility. This enables physical evaluation of complex distribution functions with the simplified circuit design and higher parallelism. Successful implementation for localization and obstacle avoidance tasks is demonstrated using Gaussian-like curves produced from Gaussian-like memory transistor. With its ultralow-power consumption, simplified design, and programmable Gaussian-like outputs, our 3-terminal Gaussian-like memory transistor holds potential as a hardware platform for probabilistic inference computing.
Funder
National Research Foundation of Korea
Publisher
Springer Science and Business Media LLC
Reference78 articles.
1. Grigorescu, S., Trasnea, B., Cocias, T. & Macesanu, G. A survey of deep learning techniques for autonomous driving. J. Field Robot. 37, 362–386 (2020).
2. Yurtsever, E., Lambert, J., Carballo, A. & Takeda, K. A survey of autonomous driving: Common practices and emerging technologies. IEEE access 8, 58443–58469 (2020).
3. Muhammad, K., Ullah, A., Lloret, J., Del Ser, J. & de Albuquerque, V. H. C. Deep learning for safe autonomous driving: Current challenges and future directions. IEEE Trans. Intell. Transportation Syst. 22, 4316–4336 (2020).
4. Fujiyoshi, H., Hirakawa, T. & Yamashita, T. Deep learning-based image recognition for autonomous driving. IATSS Res. 43, 244–252 (2019).
5. Wu, M. & Chen, L. Image recognition based on deep learning. In: 2015 Chinese automation congress (CAC) 542–546 (IEEE, 2015).
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