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A convolutional neural network approach for visual recognition in wheel production lines

机译:一种卷积神经网络方法,可用于车轮生产线上的视觉识别

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China has been the world’s largest automotive manufacturing country since 2008. The automotive wheel industry in China has been growing steadily in pace with the automobile industry. Visual recognition system that automatically classifies wheel types is a key component in the wheel production line. Traditional recognition methods are mainly based on extracted feature matching. Their accuracy, robustness, and processing speed are often compromised considerably in actual production. To overcome this problem, we proposed a convolutional neural network approach to adaptively classify wheel types in actual production lines with a complex visual background. The essential steps to achieve wheel identification include image acquisition, image preprocessing, and classification. The image differencing algorithm and histogram technique are developed on acquired wheel images to remove track disturbances. The wheel images after image processing were organized into training and test sets. This approach improved the residual network model ResNet-18 and then evaluated this model based on the wheel test data. Experiments showed that this method can obtain an accuracy over 98% on nearly 70,000 wheel images and its single image processing time can reach millisecond level.
机译:自2008年以来,中国一直是世界上最大的汽车制造国。中国汽车之车与汽车工业的步伐稳步增长。可视识别系统,可自动对车轮类型进行分类是车轮生产线中的一个关键组件。传统的识别方法主要基于提取的特征匹配。它们的准确性,鲁棒性和处理速度通常在实际生产中经常受到影响。为了克服这个问题,我们提出了一种卷积神经网络方法,以便在具有复杂的视觉背景的实际生产线中自适应地分类轮式。实现轮识别的基本步骤包括图像采集,图像预处理和分类。在获取的轮图像上开发了图像差异算法和直方图技术以去除轨道干扰。图像处理后的轮图像被组织成训练和测试集。这种方法改进了残余网络模型Reset-18,然后根据车轮测试数据进行评估该模型。实验表明,该方法可以在近70,000轮图像上获得超过98%的精度,其单个图像处理时间可以达到毫秒。

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