Airline baggage classification/recognition and measurement based on computer vision

Pan Zhang, Ming Cui, Yuhao Chen, Wei Zhang
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Abstract

The current airline baggage handling is mainly by manual, which exist serious problems such as crucial handling, baggage loss, low efficiency, high human labor cost, and so on. To solve these problems, an automatic baggage handling process is more and more needed within current airport operation. To this end, high-accuracy classification and high-precision measurement of airline baggage are essential. In this paper, three works are reported: a baggage classification recognition method based on Convolutional Neural Network (CNN) model, a baggage measurement algorithm using a combination of two-dimensional(2D) image and three-dimensional(3D) point cloud, and their realizations in an embedded platform. Firstly, gray feature of image of an airline baggage was fused with height and gradient features of point cloud of the same baggage to construct a baggage information sample. Two thousand fused baggage information samples were fed into two CNNs (vgg16 and mobilenetv3) for training. The best one was selected as the final predictor. Secondly, three-dimensional size, centroid point position and deflection angle of a baggage were measured in 3D point cloud with help of edge information extracted from the 2D image of the same baggage by Scharr operator. Finally, the proposed recognition method and measurement algorithm were transplanted into an embedded platform for efficiency purpose. Experimental results show that average classification accuracy of the proposed 2D image and 3D point cloud fused baggage information CNN model increased 10% at the best shot compared to former reported models. The proposed 2D-3D combined measurement algorithm also obtained comparable precision versus three former jobs. Most importantly, total processing time of the proposed classification and measurement program takes 86 milliseconds, which is one fifth to one tenth of the best result of former works. Plus, a lightweight version in an embedded platform took 54 milliseconds, 200 times faster than PC terminal's 13 seconds including time of data transmission. Considering a distance of dozens of kilometers in airport remote baggage handling system, the proposed embedded platform version of classification and measurement program is promising in the future's automatic scenarios, such as baggage self-service check-in, baggage tracking, automatic baggage palletization, and so on.
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基于计算机视觉的航空行李分类/识别和测量
目前航空公司的行李搬运以人工搬运为主,存在关键搬运、行李丢失、效率低、人力成本高等严重问题。为了解决这些问题,在目前的机场运营中,越来越需要自动行李处理流程。为此,航空行李的高精度分类和高精度测量是必不可少的。本文报道了基于卷积神经网络(CNN)模型的行李分类识别方法、基于二维(2D)图像和三维(3D)点云的行李测量算法及其在嵌入式平台上的实现。首先,将航空行李图像的灰度特征与相同行李的点云高度和梯度特征融合,构建行李信息样本;2000个融合的行李信息样本被输入两个cnn (vgg16和mobilenetv3)进行训练。选择最好的一个作为最终预测因子。其次,利用Scharr算子从同一件行李的二维图像中提取边缘信息,在三维点云中测量行李的三维尺寸、质心点位置和偏转角度;最后,为了提高效率,将所提出的识别方法和测量算法移植到嵌入式平台中。实验结果表明,所提出的二维图像和三维点云融合行李信息CNN模型在最佳拍摄下的平均分类精度比以往报道的模型提高了10%。所提出的2D-3D组合测量算法也获得了与前三种工作相当的精度。最重要的是,所提出的分类测量程序的总处理时间为86毫秒,是以往工作最佳结果的五分之一到十分之一。此外,在嵌入式平台上的轻量级版本只需54毫秒,比PC终端的13秒(包括数据传输时间)快200倍。考虑到机场远程行李处理系统中数十公里的距离,所提出的嵌入式平台版本的分类测量程序在未来的自动化场景中具有广阔的应用前景,如行李自助值机、行李跟踪、行李自动码垛等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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