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A fast electronic components orientation and identify method via radon transform

机译:通过radon变换的快速电子元件定位和识别方法

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This paper presents a method which combined radon transform with machine learning technology for electronic component orientation and identification in product line scenes. This method can fetch electronic components' positions and yawing angles and enables the full automation of electronic product line. Firstly, it take images contain a single electronic component as training samples and retrieve its features. Secondly, it uses thresholds to segment objects in overlapping status. Finally, it use radon transform to detect the axis of object and then according to the component features acquired from training sample and classifier, the algorithm can identify electronic component pin's orientation. To increase the method's detection accuracy and speed in factory product line environment, this paper also proposed a strategy for the combination of the method with mechanism. Experiments show that this method has a perfect performance and completely fulfills the requirements of factory product line environment. This method achieves a recall rate of 81.7% and precision rate of 95.1%, after combined the algorithm with mechanism, the precision rate enhance to 98.5% and detection speed lifting strikingly.
机译:本文提出了一种将ra变换与机器学习技术相结合的方法,用于产品线场景中的电子零件定位和识别。这种方法可以获取电子元件的位置和偏航角,并实现电子产品线的完全自动化。首先,它拍摄的图像包含单个电子组件作为训练样本并检索其特征。其次,它使用阈值分割处于重叠状态的对象。最后,利用radon变换检测物体的轴,然后根据从训练样本和分类器获得的组件特征,该算法可以识别电子组件引脚的方向。为了提高该方法在工厂生产线环境下的检测精度和速度,还提出了将该方法与机构相结合的策略。实验表明,该方法具有良好的性能,完全可以满足工厂生产线环境的要求。该方法与机制相结合,召回率达到81.7%,准确率达到95.1%,准确率提高到98.5%,检测速度显着提升。

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