Object Detection with Spiking Neural Networks on Automotive Event Data
- URL: http://arxiv.org/abs/2205.04339v1
- Date: Mon, 9 May 2022 14:39:47 GMT
- Title: Object Detection with Spiking Neural Networks on Automotive Event Data
- Authors: Lo\"ic Cordone, Beno\^it Miramond, Philippe Thierion
- Abstract summary: We propose to train spiking neural networks (SNNs) directly on data coming from event cameras to design fast and efficient automotive embedded applications.
In this paper, we conducted experiments on two automotive event datasets, establishing new state-of-the-art classification results for spiking neural networks.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Automotive embedded algorithms have very high constraints in terms of
latency, accuracy and power consumption. In this work, we propose to train
spiking neural networks (SNNs) directly on data coming from event cameras to
design fast and efficient automotive embedded applications. Indeed, SNNs are
more biologically realistic neural networks where neurons communicate using
discrete and asynchronous spikes, a naturally energy-efficient and hardware
friendly operating mode. Event data, which are binary and sparse in space and
time, are therefore the ideal input for spiking neural networks. But to date,
their performance was insufficient for automotive real-world problems, such as
detecting complex objects in an uncontrolled environment. To address this
issue, we took advantage of the latest advancements in matter of spike
backpropagation - surrogate gradient learning, parametric LIF, SpikingJelly
framework - and of our new \textit{voxel cube} event encoding to train 4
different SNNs based on popular deep learning networks: SqueezeNet, VGG,
MobileNet, and DenseNet. As a result, we managed to increase the size and the
complexity of SNNs usually considered in the literature. In this paper, we
conducted experiments on two automotive event datasets, establishing new
state-of-the-art classification results for spiking neural networks. Based on
these results, we combined our SNNs with SSD to propose the first spiking
neural networks capable of performing object detection on the complex GEN1
Automotive Detection event dataset.
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