Abstract
SNN (Spiking Neural Network) is well suited for DVS (Dynamic Vision Sensor) object recognition because the output of the DVS sensor is the spike. The existing SNNs usually build networks by fully connection with a large number of parameters. However, the deep network is unable to train with this connection and large parameter networks cannot be deployed where storage is limited. To overcome these shortcomings, we introduce a new model called Fire module. There are two structures in Fire module. One is a combination of weight sharing layers and the other is a skip connection, which reduces the number of parameters and makes deep network trainable respectively. We compare our method with existing SNNs and show that our method achieves competitive performance with 1800x fewer parameters against fully connection on TMV3-DVS and N-CARS datasets. Moreover, we combine the DVS sensor and our lightweight SNN object recognition network to produce an object recognition hardware system.
This work was partially supported by the NSF of China (No. 62022063, No. 61772388 and No. 61632019).
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Liu, Z., Huang, B., Wu, J., Shi, G. (2021). Lightweight Convolutional SNN for Address Event Representation Signal Recognition. In: Fang, L., Chen, Y., Zhai, G., Wang, J., Wang, R., Dong, W. (eds) Artificial Intelligence. CICAI 2021. Lecture Notes in Computer Science(), vol 13069. Springer, Cham. https://doi.org/10.1007/978-3-030-93046-2_26
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