Spiking neural networks have shown much promise as an energy-efficient alternative to artificial neural networks. However, understanding the impacts of sensor noises and input encodings on the network activity and performance remains difficult with common neuromorphic vision baselines like classification. Therefore, we propose a spiking neural network approach for single object localization trained using surrogate gradient descent, for frame- and event-based sensors. We compare our method with similar artificial neural networks and show that our model has competitive/better performance in accuracy, robustness against various corruptions, and has lower energy consumption. Moreover, we study the impact of neural coding schemes for static images in accuracy, robustness, and energy efficiency. Our observations differ importantly from previous studies on bio-plausible learning rules, which helps in the design of surrogate gradient trained architectures, and offers insight to design priorities in future neuromorphic technologies in terms of noise characteristics and data encoding methods.
翻译:螺旋神经网络作为人造神经网络的一种节能替代品,显示出了很大的希望。然而,由于像分类这样的普通神经形态视觉基线,人们仍然难以理解传感器噪音和输入编码对网络活动和性能的影响。因此,我们提议对使用代用梯度梯度梯度下方、框架感和事件感应器所训练的单一物体本地化采用螺旋网络方法。我们将我们的方法与类似的人造神经网络进行比较,并表明我们的模型在准确性、抵御各种腐败和降低能源消耗方面有竞争力/更好的性能。此外,我们还研究神经编码计划对静态图像的准确性、稳健性和能效的影响。我们的意见与以往关于生物可变性学习规则的研究大相径庭,后者有助于设计代用梯度梯度培训结构,并为设计未来神经形态技术的噪音特征和数据编码方法设计优先事项提供了洞察力。