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Evaluation of Object Proposals and ConvNet Features for Landmark-based Visual Place Recognition

机译:基于地标的视觉地位识别的对象提案和Convnet特征评估

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摘要

Despite significant progress has been made in visual place recognition for mobile robot navigation, challenges remain, especially in changing environments. Recently, a landmark-based visual place description technique has achieved impressive results under conditions of significant environmental and viewpoint changes, raising the interest of the community in it. This technique combines the strengths of object proposals and convolutional neural networks (ConvNets), which are the latest achievements in object detection and deep learning research. The idea is to detect landmarks in an image with an object proposal method and then characterize these landmarks as features (known as ConvNet features) computed by a ConvNet for matching landmarks. Although a large number of object proposal approaches and ConvNet features have been proposed, it remains unclear how to select or combine object proposals and ConvNet features for a landmark-based visual place recognition system. In this paper we conduct a thorough evaluation of 13 state-of-the-art object proposal methods and 13 kinds of modern ConvNet features on six datasets with various environmental and viewpoint changes, in terms of their place recognition accuracy and computational efficiency. Our study identifies the strengths and weaknesses of object proposal methods and ConvNet features with respect to environmental changes. Conclusions drawn from our analysis are expected to be useful for developing landmark-based visual place recognition systems and benefit other related research fields.
机译:尽管对移动机器人导航的视觉识别方面取得了重大进展,但仍然存在挑战,特别是在不断变化的环境中。最近,基于地标的视觉地点描述技术在重大环境和观点变化的条件下实现了令人印象深刻的结果,提高了社区的利益。该技术结合了对象建议和卷积神经网络(Convnet)的优势,这是对象检测和深度学习研究的最新成果。该想法是通过对象提议方法检测图像中的地标,然后将这些地标作为由Grandnet计算的特征(称为GromNet特征)来匹配地标。虽然已经提出了大量的对象提议方法和ConvNET功能,但仍然不清楚如何选择或组合基于地标的视觉地点识别系统的对象提案和GromNET功能。在本文中,我们对13项最先进的对象提议方法和13种现代ConvNET功能进行了彻底的评估,在其位置识别准确性和计算效率方面具有各种环境和观点变化的六种数据集。我们的研究确定了对象提案方法的优势和缺点以及对环境变化的特征。从我们的分析中得出的结论预计可用于开发基于地标的视觉地位识别系统并有益于其他相关的研究领域。

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