An Unsupervised Approach to Place-Specific Change Classification

Inagami Kazunori, Tanaka Kanji, Fei Xiaoxiao
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Abstract

In this study, we address the problem of supervised change detection for robotic map learning applications, in which the aim is to train a place-specific change classifier (e.g., support vector machine (SVM)) to predict changes from a robot's view image. An open question is the manner in which to partition a robot's workspace into places (e.g., SVMs) to maximize the overall performance of change classifiers. This is a chicken-or-egg problem: if we have a well-trained change classifier, partitioning the robot's workspace into places is rather easy; However, training a change classifier requires a set of place-specific training data. In this study, we address this novel problem, which we term unsupervised place discovery. In addition, we present a solution powered by convolutional-feature-based visual place recognition, and validate our approach by applying it to two place-specific change classifiers, namely, nuisance and anomaly predictors.
特定地点变化分类的非监督方法
在本研究中,我们解决了机器人地图学习应用的监督变化检测问题,其目的是训练特定地点的变化分类器(例如,支持向量机(SVM))来预测机器人视图图像的变化。一个悬而未决的问题是如何将机器人的工作空间划分为不同的位置(例如,svm)以最大化变更分类器的整体性能。这是一个先有鸡还是先有蛋的问题:如果我们有一个训练有素的变化分类器,那么将机器人的工作空间划分为不同的位置是相当容易的;但是,训练更改分类器需要一组特定于位置的训练数据。在这项研究中,我们解决了这个新问题,我们称之为无监督的地方发现。此外,我们提出了一种基于卷积特征的视觉位置识别的解决方案,并通过将其应用于两个特定位置的变化分类器(即滋扰和异常预测器)来验证我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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