RGB-D图像中运输袋的分割

E. Vasileva, Z. Ivanovski
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引用次数: 0

摘要

本文提出了一种卷积神经网络(CNN)架构,用于分割RGB-D图像中含有不同非结构化包装物品的混乱场景中的部分透明运输袋。所提出的体系结构针对有限数量的高可变性样本进行了优化。通过对输入类型、网络架构和光照条件的结果分析,证明了低分辨率深度信息的加入提高了对相似颜色物体和以前未见过的光照条件下物体的分割,高分辨率彩色照片大大提高了对细节的分割。为了充分利用高分辨率照片和低分辨率深度信息的优势,提出了早期特征融合的多输入结构。本文提出的CNN架构能够在杂乱的环境中,对不同颜色、不同材质、形状不规则的包裹和物品进行成功分割。与知名的语义分割架构相比,CNN提供了精度上的改进,同时显著减少了所需的处理时间,使其适合于实时应用。
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Segmentation of Shipping Bags in RGB-D Images
This paper presents a convolutional neural network (CNN) architecture for segmenting partially transparent shipping bags in RGB-D images of cluttered scenes containing different packaging items in unstructured configurations. The proposed architecture is optimized for training with a limited number of samples with high variability. The analysis of the results with regard to the input type, network architecture, and lighting conditions, proves that including low-resolution depth information improves the segmentation of objects with similar colors and objects in previously unseen lighting conditions, and the high-resolution color photographs greatly improve the segmentation of details. This motivates the proposed multi-input architecture with early feature fusion in order to fully utilize the benefits of high-resolution photographs and low-resolution depth information. The proposed CNN architecture performs successful segmentation of shipping bags in a cluttered environment among packages and items of different colors and materials with irregular shapes. The CNN provides an improvement in accuracy over well-known semantic segmentation architectures while significantly reducing the required processing time, making it suitable for real-time application.
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