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PLISS: Detecting and Labeling Places Using Online

机译:普利斯:在线使用在线检测和标记地点

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We present PLISS (Place Labeling through Image Sequence Segmentation), a novel technique for place recognition and categorization from visual cues. PLISS operates on video or image streams and works by segmenting it into pieces corresponding to distinct places in the environment. An online Bayesian change-point detection framework that detects changes to model parameters is used to segment the image stream. Unlike current place recognition methods, in addition to using previously learned place models for labeling, PLISS can also detect and learn a previously unknown place or place category in an online manner. Moreover, since both the inferred boundaries of places (change-points) and the place labels are fully probabilistic, they can indicate when the inference is uncertain. New places and categories are detected using a systematic statistical hypothesis testing framework. We present extensive experiments on a large and difficult image dataset. We validate our claims by comparing results obtained using different types of features and by comparing results from PLISS against the state of the art.
机译:我们呈现Plist(通过图像序列分割的位置),这是一种用于从视觉提示放置和分类的新技术。 Pliss在视频或图像流上运行,并通过将其分割成对应于环境中不同的位置的片段。检测到模型参数的更改的在线贝叶斯变更点检测框架用于分割图像流。与当前地点识别方法不同,除了使用先前学识表的标签模型之外,普利特还可以以在线方式检测和学习以前未知的地点或地点。此外,由于地点(变化点)和地点标签的推断边界都是完全概率的,因此它们可以指示推理不确定。使用系统统计假设检测框架检测到新的地方和类别。我们在大型和困难的图像数据集中呈现了广泛的实验。我们通过比较使用不同类型特征获得的结果和通过将普利对现有技术的结果进行比较来验证我们的索赔。

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