Deep Spiking Convolutional Neural Network for Single Object Localization Based On Deep Continuous Local Learning
This work addresses the problem of limited spiking neural network applications in computer vision for researchers and practitioners, representing an incremental step towards more elaborate vision tasks.
The paper tackled the challenge of applying spiking neural networks to complex computer vision tasks by proposing a deep convolutional spiking neural network for single object localization in grayscale images, achieving encouraging results on the Oxford-IIIT-Pet dataset.
With the advent of neuromorphic hardware, spiking neural networks can be a good energy-efficient alternative to artificial neural networks. However, the use of spiking neural networks to perform computer vision tasks remains limited, mainly focusing on simple tasks such as digit recognition. It remains hard to deal with more complex tasks (e.g. segmentation, object detection) due to the small number of works on deep spiking neural networks for these tasks. The objective of this paper is to make the first step towards modern computer vision with supervised spiking neural networks. We propose a deep convolutional spiking neural network for the localization of a single object in a grayscale image. We propose a network based on DECOLLE, a spiking model that enables local surrogate gradient-based learning. The encouraging results reported on Oxford-IIIT-Pet validates the exploitation of spiking neural networks with a supervised learning approach for more elaborate vision tasks in the future.