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Learning similarity metric for comparing RGB-D image patches by CNN

机译:用于通过CNN比较RGB-D图像块的学习相似性度量

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This study presents how to learn feature representation and similarity metric function directly from RGB-D image data for comparing RGB-D image patches. Comparing image pairs is one of fundamental task for many vision problems in robotics application such as object tracking, classification and registration. Among them, we especially focus on object registration and tracking. Traditional means of registering and tracking objects use pre-known parametric model of target objects. However, robots need to deal with various objects without using a pre-known object model. To deal with objects in a non-parametric manner, associating each individual part of an object at a previous time with each one at a current time is necessary so that coupled data indicate the identical part of the object. For this, we propose voxel comparison-based feature matching method. Each voxel at a previous time is associated with one at the current time that is the most similar in the feature space. Features are extracted by training a convolutional neural network(CNN) using a Washington RGB-D objects dataset that is modified to have rotational variance. We explore and study multiple neural network structures to find which structure is suitable for this task. Performances of each structure are compared by Receiver Operating Characteristic(ROC) curves.
机译:这项研究提出了如何直接从RGB-D图像数据中学习特征表示和相似性度量函数以比较RGB-D图像块。比较图像对是机器人技术中许多视觉问题(如对象跟踪,分类和配准)的基本任务之一。其中,我们特别关注对象注册和跟踪。注册和跟踪对象的传统方法使用目标对象的已知参数模型。但是,机器人需要在不使用已知对象模型的情况下处理各种对象。为了以非参数方式处理对象,必须将上一时间的对象的每个单独部分与当前时间的每个部分相关联,以使耦合数据指示对象的相同部分。为此,我们提出了一种基于体素比较的特征匹配方法。先前时间的每个体素与当前时间的一个在功能空间中最相似的像素相关联。通过使用被修改为具有旋转方差的Washington RGB-D对象数据集训练卷积神经网络(CNN)来提取特征。我们探索和研究了多个神经网络结构,以找到适合该任务的结构。通过接收器工作特性(ROC)曲线比较每种结构的性能。

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