Learn to Trace Odors: Autonomous Odor Source Localization via Deep Learning Methods

Lingxiao Wang, S. Pang, Jinlong Li
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引用次数: 2

Abstract

Autonomous odor source localization (OSL) has been viewed as a challenging task due to the nature of turbulent airflows and the resulting odor plume characteristics. Here we present an olfactory-based navigation algorithm via deep learning (DL) methods, which navigates a mobile robot to find an odor source without explicating specific search algorithms. Two types of deep neural networks (DNNs), namely traditional feedforward and convolutional neural networks (FNN and CNN), are proposed to generate robot velocity commands on x and y directions based on onboard sensor measurements. Training data is obtained by applying the traditional olfactory-based navigation algorithms, including moth-inspired and Bayesian-inference methods, in thousands of simulated OSL trials. After the supervised training, DNN models are validated in OSL tests with varying search conditions. Experiment results show that given the same training data, CNN is more effective than FNN, and by training with a fused data set, the proposed CNN achieves a comparable search performance with the Bayesian-inference method while requires less computational time.
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学习追踪气味:通过深度学习方法自主定位气味源
由于湍流气流的性质和产生的气味羽流特征,自主气味源定位(OSL)一直被视为一项具有挑战性的任务。在这里,我们提出了一种基于嗅觉的导航算法,该算法通过深度学习(DL)方法,在不说明特定搜索算法的情况下,导航移动机器人找到气味源。提出了两种深度神经网络(dnn),即传统的前馈神经网络和卷积神经网络(FNN和CNN),根据机载传感器的测量结果生成机器人在x和y方向上的速度命令。在数千次模拟的OSL试验中,应用传统的基于嗅觉的导航算法(包括飞蛾启发和贝叶斯推理方法)获得训练数据。经过监督训练后,DNN模型在不同搜索条件下的OSL测试中得到验证。实验结果表明,在相同的训练数据下,CNN比FNN更有效,并且通过融合数据集的训练,该CNN的搜索性能与贝叶斯推理方法相当,而计算时间更少。
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