Indoor Semantic Segmentation for Robot Navigating on Mobile

Wonsuk Kim, Junhee Seok
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引用次数: 30

Abstract

In recent years, there have been many successes of using Deep Convolutional Neural Networks (DCNNs) in the task of pixel-level classification (also called “semantic image segmentation”). The advances in DCNN have led to the development of autonomous vehicles that can drive with no driver controls by using sensors like camera, LiDAR, etc. In this paper, we propose a practical method to implement autonomous indoor navigation based on semantic image segmentation using state-of-the-art performance model on mobile devices, especially Android devices. We apply a system called ‘Mobile DeepLabv3’, which uses atrous convolution when applying semantic image segmentation by using MobileNetV2 as a network backbone. The ADE20K dataset is used to train our models specific to indoor environments. Since this model is for robot navigating, we re-label 150 classes into 20 classes in order to easily classify obstacles and road. We evaluate the trade-offs between accuracy and computational complexity, as well as actual latency and the number of parameters of the trained models.
移动机器人导航的室内语义分割
近年来,在像素级分类(也称为“语义图像分割”)任务中使用深度卷积神经网络(Deep Convolutional Neural Networks, DCNNs)取得了许多成功。DCNN的进步导致了自动驾驶汽车的发展,通过使用摄像头、激光雷达等传感器,自动驾驶汽车可以在没有驾驶员控制的情况下行驶。在本文中,我们提出了一种实用的方法来实现基于语义图像分割的自主室内导航,使用最先进的性能模型在移动设备,特别是Android设备上。我们应用了一个名为“Mobile DeepLabv3”的系统,该系统通过使用MobileNetV2作为网络骨干,在应用语义图像分割时使用自然卷积。ADE20K数据集用于训练特定于室内环境的模型。由于这个模型是用于机器人导航的,我们将150类重新标记为20类,以便方便地对障碍物和道路进行分类。我们评估了准确性和计算复杂性之间的权衡,以及实际延迟和训练模型的参数数量。
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