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Deep Spiking Convolutional Neural Network for Single Object Localization Based On Deep Continuous Local Learning

机译:基于深度连续局部学习的单对象定位深度尖峰卷积神经网络

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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.
机译:随着神经形态硬件的出现,尖峰神经网络可以是人工神经网络的良好节能替代品。但是,使用尖刺神经网络执行计算机视觉任务仍然有限,主要关注数字识别等简单任务。由于这些任务的深度尖峰神经网络的少量工作,它仍然很难处理更复杂的任务(例如,分段,对象检测)。本文的目的是通过监督尖刺神经网络对现代计算机愿景进行第一步。我们提出了一个深度卷积的尖峰神经网络,用于在灰度图像中定位一个物体。我们提出了一种基于脱底的网络,这是一种尖峰模型,可以实现基于替代梯度的学习。牛津-IIIT-PET报告的令人鼓舞的结果验证了尖刺神经网络的利用,并在未来更具精心设计的愿景任务的监督学习方法。

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