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A comparison of shape-based matching with deep-learning-based object detection

机译:基于形状的基于深度学习对象检测的比较

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摘要

Matching, i.?e. determining the exact 2D pose (e.?g., position and orientation) of objects, is still one of the key tasks in machine vision applications like robot navigation, measuring, or grasping an object. There are many classic approaches for matching, based on edges or on the pure gray values of the template. In recent years, deep learning has been utilized mainly for more difficult tasks where the objects of interest are from many different categories with high intra-class variations and classic algorithms are failing. In this work, we compare one of the latest deep-learning-based object detectors with classic shape-based matching. We evaluate the methods both on a matching dataset as well as an object detection dataset that contains rigid objects and is thus also suitable for shape-based matching. We show that for datasets of this type, where rigid objects appear with rigid transformations, shape-based matching still outperforms recent object detectors regarding runtime, robustness, and precision if only a single template image per object is used. On the other hand, we show that for the application of object detection, the deep-learning-based approach outperforms the classic approach if annotated data is used for training. Ultimately, the choice of the best suited approach depends on the conditions and requirements of the application.
机译:匹配,一世。确定对象的精确2D姿势(E.OTE,位置和方向),仍然是机器人视觉应用中的主要任务之一,如机器人导航,测量或抓住物体。基于边缘或模板的纯灰度值,有许多匹配的经典方法。近年来,深入学习主要用于更加困难的任务,其中感兴趣的对象来自许多不同类别的高级变化和经典算法失败。在这项工作中,我们比较了基于经典形状的匹配的最新的基于深度学习的对象探测器之一。我们评估匹配数据集的方法以及包含刚性对象的对象检测数据集,因此也适用于基于形状的匹配。我们表明,对于这种类型的数据集,其中刚性的对象具有刚性变换,基于形状的匹配仍然优于最近的对象检测器,即在运行时,鲁棒性和精度,如果仅使用每个对象的单个模板图像。另一方面,我们表明,对于对象检测的应用,如果注释数据用于训练,基于深度学习的方法优于经典方法。最终,最合适的方法的选择取决于应用的条件和要求。

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