论文标题

严格耦合学习策略,用于弱监督的层次结构识别

Tightly Coupled Learning Strategy for Weakly Supervised Hierarchical Place Recognition

论文作者

Shen, Y., Wang, R., Zuo, W., Zheng, N.

论文摘要

Visual Place识别(VPR)是机器人技术和自主系统的关键问题。对于时间和性能之间的折衷,大多数方法都使用粗到精细的分层体系结构,该体系结构包括使用全局功能检索Top-N候选者,然后将Top-N重新排列到本地功能。但是,由于通常独立处理两种类型的功能,因此重新排列可能会损害全球检索,称为重新排列的混乱。此外,重新排列受全球检索的限制。在本文中,我们提出了一个紧密耦合的学习(TCL)策略来培训三重态模型。与原始三胞胎学习(OTL)策略不同,它结合了全球和本地描述符以进行联合优化。此外,还提出了双向搜索动态时间扭曲(BS-DTW)算法,以挖掘针对VPR重新排列的本地空间信息。公共基准测试的实验结果表明,使用TCL的模型超过了使用OTL模型,并且可以将TCL用作提高弱监督排名任务的性能的一般策略。此外,我们的轻质统一模型比几种最先进的方法更好,并且具有超过计算效率的数量级,以满足机器人的实时要求。

Visual place recognition (VPR) is a key issue for robotics and autonomous systems. For the trade-off between time and performance, most of methods use the coarse-to-fine hierarchical architecture, which consists of retrieving top-N candidates using global features, and re-ranking top-N with local features. However, since the two types of features are usually processed independently, re-ranking may harm global retrieval, termed re-ranking confusion. Moreover, re-ranking is limited by global retrieval. In this paper, we propose a tightly coupled learning (TCL) strategy to train triplet models. Different from original triplet learning (OTL) strategy, it combines global and local descriptors for joint optimization. In addition, a bidirectional search dynamic time warping (BS-DTW) algorithm is also proposed to mine locally spatial information tailored to VPR in re-ranking. The experimental results on public benchmarks show that the models using TCL outperform the models using OTL, and TCL can be used as a general strategy to improve performance for weakly supervised ranking tasks. Further, our lightweight unified model is better than several state-of-the-art methods and has over an order of magnitude of computational efficiency to meet the real-time requirements of robots.

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