Guo Jiaxing, Guo Feng, Zhao Huijun, Yang Hang, Du Xiaona, Fan Fei, Liu Weiwei, Zhang Yang, Tu Dong, Hao Jianhua
Institute of Modern Optics and Tianjin Key Laboratory of Micro-Scale Optical Information Science and Technology, Nankai University, Tianjin, 300071, P. R. China.
Department of Applied Physics, The Hong Kong Polytechnic University, Hong Kong, Hung Hom, 999077, P. R. China.
Adv Mater. 2025 Apr;37(14):e2419405. doi: 10.1002/adma.202419405. Epub 2025 Feb 25.
In-sensor computing paradigm holds the promise of realizing rapid and low-power signal processing. Constructing crossmodal in-sensor computing systems to emulate human sensory and recognition capabilities has been a persistent pursuit for developing humanoid robotics. Here, an artificial mechano-optical synapse is reported to implement in-sensor dynamic computing with visual-tactile perception. By employing mechanoluminescence (ML) material, direct conversion of the mechanical signals into light emission is achieved and the light is transported to an adjacent photostimulated luminescence (PSL) layer without pre- and post-irradiation. The PSL layer acts as a photon reservoir as well as a processing unit for achieving in-memory computing. The approach based on ML coupled with PSL material is different from traditional circuit-constrained methods, enabling remote operation and easy accessibility. Individual and synergistic plasticity are elaborately investigated under force and light pulses, including paired-pulse facilitation, learning behavior, and short-term and long-term memory. A multisensory neural network is built for processing the obtained handwritten patterns with a tablet consisting of the device, achieving a recognition accuracy of up to 92.5%. Moreover, material identification has been explored based on visual-tactile sensing, with an accuracy rate of 98.6%. This work provides a promising strategy to construct in-sensor computing systems with crossmodal integration and recognition.
传感器内计算范式有望实现快速且低功耗的信号处理。构建跨模态传感器内计算系统以模拟人类的感官和识别能力,一直是类人机器人研发的不懈追求。在此,我们报道了一种人工机械光突触,用于实现具有视觉触觉感知的传感器内动态计算。通过采用机械发光(ML)材料,实现了机械信号到光发射的直接转换,且光无需预辐照和后辐照即可传输到相邻的光致发光(PSL)层。PSL层既作为光子存储库,又作为实现内存计算的处理单元。基于ML与PSL材料的方法不同于传统的电路受限方法,实现了远程操作且易于使用。在力和光脉冲作用下,对个体可塑性和协同可塑性进行了深入研究,包括双脉冲易化、学习行为以及短期和长期记忆。利用由该器件组成的数位板构建了一个多感官神经网络,用于处理获取的手写图案,识别准确率高达92.5%。此外,基于视觉触觉传感探索了材料识别,准确率为98.6%。这项工作为构建具有跨模态集成和识别能力的传感器内计算系统提供了一种很有前景的策略。