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Vision-based detection of container lock holes using a modified local sliding window method

机译:基于视觉的容器锁孔检测使用改进的局部滑动窗口方法

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Abstract Container yards have been facing the increase of freight volume. In order to improve the efficiency of container handling, automatic stations have been established in many terminals. However, current container handling still needs a manual operation to locate container lock holes. Hence, it is inefficient and potential to risk workers’ health under long working hours. This paper presented a hybrid machine vision method to automatically recognize and locate container lock holes. The proposed method extracted the top area of the container from the multiple container areas, and then presented a new modified local sliding window to detect the keyhole region. The algorithm learned the histograms of oriented gradients (HOG) features using a multi-class support vector machine (SVM). Finally, the holes were located using direct least square fitting of ellipses. We carried an experiment under various weather and light conditions including nights and rainy days. The results showed that both the recognition and location accuracy outperformed the state-of-the-art results.
机译:摘要集装箱码面临货运量的增加。为了提高集装箱处理的效率,在许多终端中已经建立了自动站。但是,当前的集装箱处理仍需要手动操作来定位容器锁定孔。因此,在长期工作时间下,危险工人的健康状况效率低,潜力。本文提出了一种混合机器视觉方法,可自动识别和定位容器锁定孔。所提出的方法从多个容器区域提取容器的顶部区域,然后呈现新的修改的局部滑动窗口以检测钥匙孔区域。该算法使用多级支持向量机(SVM)了解了面向渐变(HOG)特征的直方图。最后,孔使用椭圆的直接方形配件定位。我们在各种天气和光线条件下进行了实验,包括夜晚和雨天。结果表明,识别和定位精度均表现出最先进的结果。

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