Low-overhead visual place recognition (VPR) is a highly active research topic. Mobile robotics applications often operate under low-end hardware, and even more hardware capable systems can still benefit from freeing up onboard system resources for other navigation tasks. This work addresses lightweight VPR by proposing a novel system based on the combination of binary-weighted classifier networks with a one-dimensional convolutional network, dubbed merger. Recent work in fusing multiple VPR techniques has mainly focused on increasing VPR performance, with computational efficiency not being highly prioritized. In contrast, we design our technique prioritizing low inference times, taking inspiration from the machine learning literature where the efficient combination of classifiers is a heavily researched topic. Our experiments show that the merger achieves inference times as low as 1 millisecond, being significantly faster than other well-established lightweight VPR techniques, while achieving comparable or superior VPR performance on several visual changes such as seasonal variations and viewpoint lateral shifts.
翻译:低压直观位置识别(VPR)是一个非常活跃的研究课题。 移动机器人应用通常在低端硬件下运作,甚至更多的硬件能力系统仍能从释放机载系统资源用于其他导航任务中受益。 这项工作通过提出一个基于二进制加权分类网络与单维连带网络相结合的新型系统,即所谓的合并来解决轻轻VPR问题。 最近关于冻结多种VPR技术的工作主要侧重于提高VPR性能,而计算效率不高。 相反,我们设计的技术优先考虑低端推论时间,从机载学习文献中获取灵感,而机载学文献中高效组合的分类器是一个大量研究课题。我们的实验表明,合并的推论时间低至1毫秒,比其他公认的光级VPR技术快得多,同时在诸如季节变化和观点横向转移等若干视觉变化上实现可比或高级VPR性工作表现。