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Object Recognition, Localization and Grasp Detection Using a Unified Deep Convolutional Neural Network with Multi-task Loss

机译:使用具有多任务损失的统一深度卷积神经网络进行对象识别,定位和抓取检测

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Recognize an object and detect a good grasp in unstructured scenes is still a challenge. In this paper, the problem of detecting robotic grasps is expressed by a two-point representation in an unstructured scene with an RGB-D camera. A deep Convolutional Neural Network is designed to predict good grasps in real-time on GTX1080, with using region proposal techniques. A contribution of this work is our proposed network framework can perform classification, location and grasp detection simultaneously so that in a single step, it not only recognizes the category and bounding-box of the object, but also finds a good grasp line. Besides, in training process, we minimize a multi-task loss objective function of object classification, location and grasp detection in order to train the network end-to-end. Our experimental evaluation on a real robotic manipulator demonstrates that the robotic manipulator can fulfill the grasping task effectively.
机译:识别对象并在非结构化场景中检测出良好的抓取能力仍然是一个挑战。在本文中,通过RGB-D摄像机在非结构化场景中的两点表示来表达检测机器人抓地力的问题。深度卷积神经网络旨在通过使用区域建议技术实时预测GTX1080上的良好抓取能力。这项工作的一个贡献是,我们提出的网络框架可以同时执行分类,定位和抓握检测,因此,在一个步骤中,它不仅可以识别对象的类别和边界框,而且可以找到一条良好的抓线。此外,在训练过程中,我们将对象分类,定位和抓握检测的多任务损失目标函数最小化,以端到端地训练网络。我们对一个真实的机械手的实验评估表明,该机械手可以有效地完成抓取任务。

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