Enhanced Temporal Processing in Spiking Neural Networks for Static Object Detection Using 3D Convolutions
Huaxu He

TL;DR
This paper introduces a novel approach using 3D convolutions and temporal recurrence in spiking neural networks to significantly improve their performance on static object detection tasks, bridging the gap with traditional neural networks.
Contribution
It proposes replacing 2D with 3D convolutions and adding a temporal recurrence mechanism in SNNs to enhance spatiotemporal processing capabilities.
Findings
Achieved performance comparable to ANNs on COCO2017 dataset
Enhanced temporal information processing in SNNs
Demonstrated effectiveness on VOC dataset
Abstract
Spiking Neural Networks (SNNs) are a class of network models capable of processing spatiotemporal information, with event-driven characteristics and energy efficiency advantages. Recently, directly trained SNNs have shown potential to match or surpass the performance of traditional Artificial Neural Networks (ANNs) in classification tasks. However, in object detection tasks, directly trained SNNs still exhibit a significant performance gap compared to ANNs when tested on frame-based static object datasets (such as COCO2017). Therefore, bridging this performance gap and enabling directly trained SNNs to achieve performance comparable to ANNs on these static datasets has become one of the key challenges in the development of SNNs.To address this challenge, this paper focuses on enhancing the SNN's unique ability to process spatiotemporal information. Spiking neurons, as the core…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural Networks and Applications · CCD and CMOS Imaging Sensors
MethodsSpiking Neural Networks
