Image Classification Using Sum-Product Networks for Autonomous Flight of Micro Aerial Vehicles

B. Sguerra, Fabio Gagliardi Cozman
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引用次数: 12

Abstract

Flying autonomous micro aerial vehicles (MAVs) in indoor environments is still a challenging task, as MAVs are not capable of carrying heavy sensors as Lidar or RGD-B, and GPS signals are not reliable indoors. We investigate a strategy where image classification is used to guide a MAV, one of the main requirements then is to have a classifier that can produce results quickly during operation. The goal here is to explore the performance of Sum-Product Networks and Arithmetic Circuits as image classifiers, because these formalisms lead to deep probabilistic models that are tractable during operation. We have trained and tested our classifiers using the Libra toolkit and real images. We describe our approach and report the result of our experiments in the paper.
基于和积网络的微型飞行器自主飞行图像分类
在室内环境中飞行自主微型飞行器(MAVs)仍然是一项具有挑战性的任务,因为MAVs不能携带像激光雷达或RGD-B这样的重型传感器,而且GPS信号在室内也不可靠。我们研究了一种使用图像分类来指导MAV的策略,其中一个主要要求是在操作过程中具有能够快速产生结果的分类器。这里的目标是探索和积网络和算术电路作为图像分类器的性能,因为这些形式化导致在操作过程中易于处理的深度概率模型。我们已经使用Libra工具包和真实图像训练和测试了我们的分类器。我们在论文中描述了我们的方法并报告了我们的实验结果。
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