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A New Semantic-Based Tool Detection Method for Robots

机译:一种新的机器人基于语义的工具检测方法

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Home helper robots have become more acceptable due to their excellent image recognition ability. However, some common household tools remain challenging to recognize, classify, and use by robots. We designed a detection method for the functional components of common household tools based on the mask regional convolutional neural network (Mask-R-CNN). This method is a multitask branching target detection algorithm that includes tool classification, target box regression, and semantic segmentation. It provides accurate recognition of the functional components of tools. The method is compared with existing algorithms on the dataset UMD Part Affordance dataset and exhibits effective instance segmentation and key point detection, with higher accuracy and robustness than two traditional algorithms. The proposed method helps the robot understand and use household tools better than traditional object detection algorithms.
机译:由于其出色的图像识别能力,家庭助手机器人已经变得更加接受。 但是,一些普通的家庭工具仍然具有挑战性,以识别,分类和使用机器人使用。 我们设计了基于掩模区域卷积神经网络(Mask-R-CNN)的普通家用工具功能部件的检测方法。 该方法是一个多任务分支目标检测算法,包括工具分类,目标框回归和语义分割。 它提供了准确识别工具功能组件。 将该方法与数据集UMD部件提供数据集上的现有算法进行比较,并且具有比两个传统算法更高的精度和鲁棒性的有效实例分段和关键点检测。 该方法有助于机器人比传统对象检测算法更好地理解和使用家用工具。

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