Event-Based Object Detection using Graph Neural Networks

Daobo Sun, H. Ji
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引用次数: 1

Abstract

Event-based object detection is a challenging but promising task, as the nature of sparsity and asynchrony of events is incompatible with state-of-the-art object detection approaches. Conventional deep neural networks do not take advantage of the event camera's high event sampling rate, low power consumption and robustness of brightness changes. Recent works addresses the problem of redundant computations by using a graph representation to model the feature of event streams that the graph representation and graph neural networks for event streams can efficiently extract the meaningful information and reduce the computational complexity. Nevertheless, there is still room for improvement in terms of accuracy and computation efficiency. In this work, we propose a graph-based architecture and a new mechanism for updating the graph, which significantly increases the capacity of graph neural networks while maintaining highly efficient per-event processing. In object detection task, our model achieves higher accuracy and lower FLOPS per event compared to various synchronous/asynchronous methods. To our belief, the framework we proposed is effective and robust, as well as being a significant reduction in the amount of redundant computation.
基于事件的图神经网络目标检测
基于事件的对象检测是一项具有挑战性但很有前途的任务,因为事件的稀疏性和异步性与最先进的对象检测方法不兼容。传统的深度神经网络不能充分利用事件相机的高事件采样率、低功耗和亮度变化的鲁棒性。最近的研究利用图表示来模拟事件流的特征,解决了冗余计算问题,事件流的图表示和图神经网络可以有效地提取有意义的信息,降低计算复杂度。然而,在精度和计算效率方面仍有提高的空间。在这项工作中,我们提出了一种基于图的架构和一种新的图更新机制,该机制显著提高了图神经网络的容量,同时保持了高效的每事件处理。在目标检测任务中,与各种同步/异步方法相比,我们的模型实现了更高的精度和更低的单事件FLOPS。我们认为,我们提出的框架是有效和健壮的,并且显著减少了冗余计算量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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