基于SSD算法的集装箱编号定位

Bingqian Ding, Jianming Guo, Junhong Hu
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引用次数: 0

摘要

在R-CNN等经典框架被提出后,基于深度学习的目标定位框架逐渐成为主流。采用SSD (Single Shot MultiBox Detector)框架模型定位箱号。通过比较不同标记方法对训练样本的定位效果,标记为单行或单列的基本单元定位效果要好得多。以集装箱号的实际尺寸和比例为参考,修改SSD帧中使用的特征层生成默认框,调整特征图的大小,可以更好地适应定位。结果表明,在复杂箱号场景下,基于SSD网络的箱号检测准确率达到78%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Container number localization based on SSD algorithm
After R-CNN and other classical frameworks were proposed, deep learning based target positioning framework has gradually become the mainstream. The SSD (Single Shot MultiBox Detector) framework model was used to locate the container number. By comparing the locating effects of different labeling methods for training samples, the basic unit that label as Single row or Single column is much better. With the actual size and proportion of the container number as reference, that modifying the feature layers which are used in SSD frame to generate the default box and adjusting the size of the feature map could adapt to the localization better. The result show that in the complex container number scenario, the accuracy based on SSD network to detect container number reaches 78%.
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