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首页> 外文期刊>IEEE transactions on industrial informatics >A Circular Target Feature Detection Framework Based on DCNN for Industrial Applications
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A Circular Target Feature Detection Framework Based on DCNN for Industrial Applications

机译:基于DCNN的工业应用的循环目标特征检测框架

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This article presents a novel target detection method, which is named as circular target feature detection framework based on a deep convolutional neural network (DCNN). The central proposition of this method uses the optimized DCNN architecture to detect the target and locate the position of the circle accurately in the image field of view. In this article, a Hough transform based on threshold processing (HTP) is embedded into the optimized DCNN architecture, which calculates the center positions and radius of all circles by training the circular samples for each detected rectangular frame. It can efficiently identify small circular target materials in the industry and screen out unqualified particles. The experimental results show that the boundary information of the circles is obtained clearly from the complex noise background images, thereby accurately determining the location of the circle. It has some advantages over only using a specific circular recognition algorithm. We proposed the new study on HTP-DCNN, which has extremely high accuracy in the field of machine vision positioning with circles for industrial applications.
机译:本文介绍了一种新的目标检测方法,该方法基于深度卷积神经网络(DCNN)命名为圆形目标特征检测框架。该方法的核心命题使用优化的DCNN架构来检测目标并在图像视场中准确地定位圆的位置。在本文中,基于阈值处理(HTP)的Hough变换嵌入到优化的DCNN架构中,通过为每个检测到的矩形框架训练圆形样本来计算所有圆的中心位置和半径。它可以有效地识别行业中的小圆形目标材料,并筛选出不合格的颗粒。实验结果表明,从复杂的噪声背景图像清楚地获得圆的边界信息,从而精确地确定圆的位置。仅使用特定的循环识别算法,它具有一些优点。我们提出了对HTP-DCNN的新研究,它在机器视野中具有极高的准确性,在机器视觉定位与工业应用圈子。

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