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TU-Net and TDeepLab: Deep Learning-Based Terrain Classification Robust to Illumination Changes, Combining Visible and Thermal Imagery

机译:TU-Net和TDeepLab:基于深度学习的地形分类对照明变化具有鲁棒性,将可见光图像和热成像图像相结合

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In this paper we propose two novel deep learning-based terrain classification methods robust to illumination changes. The use of cameras is challenged by a variety of factors, of most importance being the changes in illumination. On the other hand, since the temperature of various types of terrains depends on the thermal characteristics of the terrain, the terrain classification can be aided by utilizing the thermal information in addition to visible information. Thus we propose 'TU-Net (Two U-Net)' based on the U-Net and 'TDeepLab (Two DeepLab)' based on DeepLab, which combine visible and thermal images and train the network robust to illumination changes implicitly. To improve the network's learning capability, we expand the proposed methods to the Siamese-based method, which explicitly trains the network to be robust to illumination changes. We also investigate multiple options to fuse the visible and thermal images at at the bottom layer, middle layer, or the top layer of the network. We evaluate the proposed methods with a challenging new dataset consisting of visible and thermal images, which were collected from 10 am till 5 pm (after sunset), and we show the effectiveness of the proposed methods.
机译:在本文中,我们提出了两种新颖的基于深度学习的地形分类方法,该方法对光照变化具有鲁棒性。照相机的使用受到多种因素的挑战,最重要的是照明的变化。另一方面,由于各种类型的地形的温度取决于地形的热特性,因此除了可见信息之外,还可以通过利用热信息来辅助地形分类。因此,我们提出了基于U-Net的“ TU-Net(两个U-Net)”和基于DeepLab的“ TDeepLab(两个DeepLab)”,它们结合了可见光图像和热图像,并训练了网络对照明变化的鲁棒性。为了提高网络的学习能力,我们将提出的方法扩展为基于连体的方法,该方法显式地训练网络对照明变化具有鲁棒性。我们还研究了在网络的底层,中间层或顶层将可见图像和热图像融合在一起的多种选择。我们用具有挑战性的,由可见光和热图像组成的新数据集评估提出的方法,这些数据集是从上午10点到下午5点(日落之后)收集的,我们证明了提出方法的有效性。

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