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New Hybrid Fuzzy-CNN Architecture for Human-Robot Interaction

机译:用于人机互动的新的混合模糊CNN架构

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This article presents the design and the training of a new hybrid network architecture based on architectures of convolutional neural networks and a fuzzy output layer. The architecture is applied to the recognition of objects and it uses the information of distance from the point of capture of the image to the object. It seeks to address the problem of variability in the classification confidence level of a conventional convolutional network by varying the distance of the camera with respect to the object, which is presented in robot-human interaction environments, when the robot should change trajectory, so it does not collide with a person. For the tests carried out, the proposed architecture has a low value of variance and standard deviation with a value of 0.0046 and 0.068, respectively, achieving the task of gripping objects, facing interruptions of their work space, given, for example, by the interaction of a human in it.
机译:本文介绍了基于卷积神经网络的架构和模糊输出层的新混合网架构的设计和培训。 该体系结构应用于对象的识别,并且它使用从图像的捕获点到对象的距离信息。 它试图通过改变相机相对于对象的距离来解决传统卷积网络的分类置信水平的变异性问题,当机器人应该改变轨迹时,所以当机器人应该改变轨迹时 不与一个人碰撞。 对于执行的测试,所提出的架构的方差值和标准偏差分别具有0.0046和0.068的标准偏差,分别实现抓握物体的任务,面对其工作空间的中断,例如通过交互给出 一个人的人。

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