Compact Environment-Invariant Codes for Robust Visual Place Recognition

Unnat Jain, Vinay P. Namboodiri, Gaurav Pandey
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引用次数: 6

Abstract

Robust visual place recognition (VPR) requires scene representations that are invariant to various environmental challenges such as seasonal changes and variations due to ambient lighting conditions during day and night. Moreover, a practical VPR system necessitates compact representations of environmental features. To satisfy these requirements, in this paper we suggest a modification to the existing pipeline of VPR systems to incorporate supervised hashing. The modified system learns (in a supervised setting) compact binary codes from image feature descriptors. These binary codes imbibe robustness to the visual variations exposed to it during the training phase, thereby, making the system adaptive to severe environmental changes. Also, incorporating supervised hashing makes VPR computationally more efficient and easy to implement on simple hardware. This is because binary embeddings can be learned over simple-to-compute features and the distance computation is also in the low dimensional hamming space of binary codes. We have performed experiments on several challenging data sets covering seasonal, illumination and viewpoint variations. We also compare two widely used supervised hashing methods of CCAITQ [1] and MLH [1] and show that this new pipeline out-performs or closely matches the state-of-the-art deep learning VPR methods that are based on high-dimensional features extracted from pre-trained deep convolutional neural networks.
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鲁棒视觉位置识别的紧凑环境不变性编码
鲁棒视觉位置识别(VPR)需要对各种环境挑战(如季节变化和昼夜环境照明条件的变化)保持不变的场景表示。此外,一个实用的VPR系统需要环境特征的紧凑表示。为了满足这些要求,本文建议对现有VPR系统的管道进行修改,以加入监督哈希。改进后的系统(在监督设置下)从图像特征描述符中学习紧凑的二进制代码。在训练阶段,这些二进制代码对暴露在它面前的视觉变化具有鲁棒性,从而使系统能够适应严重的环境变化。此外,结合监督散列使VPR计算更有效,并且易于在简单的硬件上实现。这是因为二进制嵌入可以通过简单计算的特征来学习,并且距离计算也是在二进制码的低维汉明空间中进行的。我们在几个具有挑战性的数据集上进行了实验,这些数据集涵盖了季节、光照和视点变化。我们还比较了CCAITQ[1]和MLH[1]两种广泛使用的监督哈希方法,并表明这种新的管道优于或接近最先进的深度学习VPR方法,该方法基于从预训练的深度卷积神经网络中提取的高维特征。
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