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Appearance-invariant place recognition by adversarially learning disentangled representation

机译:外观 - 不变地识别通过对抗外面的解散代表

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Place recognition is an essential component to address the problem of visual navigation and SLAM. The long-term place recognition is challenging as the environment exhibits significant variations across different times of the days, months, and seasons. In this paper, we view appearance changes as multiple domains and propose a Feature Disentanglement Network (FDNet) based on a convolutional auto-encoder and adversarial learning to extract two independent deep features - content and appearance. In our network, the content feature is learned which only retains the content information of images through the competition with the discriminators and content encoder. Besides, we utilize the triplets loss to make the appearance feature encode the appearance information. The generated content features are directly used to measure the similarity of images without dimensionality reduction operations. We use datasets that contain extreme appearance changes to carry out experiments, which show how meaningful recall at 100% precision can be achieved by our proposed method where existing state-of-art approaches often get worse performance. (C) 2020 Elsevier B.V. All rights reserved.
机译:地点识别是解决视觉导航和SLAM问题的重要组成部分。随着环境,几个月和季节的不同时间呈现出显着变化,长期地位识别是具有挑战性的。在本文中,我们将外观变化视为多个域,并根据卷积自动编码器和对冲学习提出一个特征解剖网络(FDNET),以提取两个独立的深度特征 - 内容和外观。在我们的网络中,学习内容特征,其仅通过与鉴别器和内容编码器的竞争来保留图像的内容信息。此外,我们利用三胞胎丢失来使外观特征对外观信息进行编码。生成的内容特征直接用于测量没有维度减少操作的图像的相似性。我们使用包含极端外观变化的数据集来执行实验,这表明我们所提出的方法可以实现100%精度的召回程度如何,其中现有的最先进的方法经常变得更糟。 (c)2020 Elsevier B.V.保留所有权利。

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