距离图中包边的检测

E. Vasileva, Nenad Avramovski, Z. Ivanovski
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引用次数: 2

摘要

本文提出了一种基于cnn的算法,用于在包装场景的自定义数据集上训练的距离图(距离图像)表示的场景中检测包装边缘。该算法为拖车自动装卸货物的识别奠定了基础。本文的主要重点是设计一个语义分割CNN模型,该模型能够在包含飞行时间(ToF)扫描距离误差特征的距离图中检测不同类型的包装边缘,并将盒子边缘与属于其他类型包装物体(袋子、不规则物体等)的边缘区分开来。所提出的CNN针对有限数量的样本进行了优化,样本中包含严重不平衡的类别。通过自定义的基于非最大抑制的边缘细化算法,从CNN输出的概率图中生成厚度为1像素的边缘二进制掩码。该算法在检测盒边缘方面取得了良好的效果。
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Detection of Package Edges in Distance Maps
This paper presents a CNN-based algorithm for detecting package edges in a scene represented with a distance map (range image), trained on a custom dataset of packaging scenarios. The proposed algorithm represents the basis for package recognition for automatic trailer loading/unloading. The main focus of this paper is designing a semantic segmentation CNN model capable of detecting different types of package edges in a distance map containing distance errors characteristic of Time-of-Flight (ToF) scanning, and differentiating box edges from edges belonging to other types of packaging objects (bags, irregular objects, etc.). The proposed CNN is optimized for training with a limited number of samples containing heavily imbalanced classes. Generating a binary mask of edges with 1-pixel thickness from the probability maps outputted from the CNN is achieved through a custom non-maximum suppression-based edge thinning algorithm. The proposed algorithm shows promising results in detecting box edges.
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