/ZnO memristor to address this challenge. The device exhibits a selection ratio and nonlinearity (both of ~10⁷), picoampere-level leakage currents, and microsecond-scale volatile dynamics. We integrate these memristors into a 32×32 array emulating the first-spike-time-coding mechanism of the frog visual system, enabling millisecond-scale pulse responses. When applied to aerial drone object detection, our hardware system achieves reliable recognition for pedestrians and vehicles, with only a 2.5% accuracy drop compared to software simulations. Furthermore, the array demonstrates a parallel processing scale of ~8.36×10¹² computational nodes under a 10% read margin. This work provides a tangible hardware solution for constructing fast-response neuromorphic computing systems at the edge, suitable for intelligent transportation and real-time monitoring.
Zhang et al. (Thu,) studied this question.