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Recognition method research on rough handling of express parcels based on acceleration features and CNN

机译:基于加速特征和CNN的快速处理粗糙处理的识别方法研究

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Rough Handling of Express Parcels (RHEP) increases the risk of courier cargo damage and hurts the reputation of the express industry. Meanwhile, RHEP indirectly caused excessive use of packaging materials and cushioning materials, thereby aggravating environmental and social problems, such as waste disposal pressure and waste of resources. The prerequisite to prevent RHEP is recognition of it. Three typical types of RHEP (dropping, kicking fast and throwing) are discussed in this paper. For these types of RHEP, an intelligent recognition method is proposed. The main idea is to window the acceleration data of the package and extract the features in the window, then arrange these feature data into a three-dimensional matrix as the input of the CNN, and finally obtain the recognition result. In the study, mean, variance, kurtosis, skewness, dynamic range, short-term energy, and zero-crossing rate are considered to be good features in the issues dealt with in this paper. The feature data are organized in a way that different features occupy different channels. Within the uniform channel, three rows correspond to three axes, and the time window order corresponds to consecutive columns. This arrangement of feature data can take full advantage of convolution operations to mine the potential information of acceleration signals with time series characteristics and spatial characteristics. Experimental results show that the recognition accuracy of this method can reach 93.2-96.12% steadily, which is better than the performance of directly arranging features into vectors and sending it to the fully connected network (recognition accuracy is 85-95% and fluctuates greatly). Combining the recognition results of this method with the time and place of RHEP can more clearly analyze the causes of RHEP and propose targeted preventive measures. (C) 2020 Elsevier Ltd. All rights reserved.
机译:Express Parcels(Rhep)的粗略处理增加了快递货物损坏的风险,并伤害了快递行业的声誉。同时,Rhep间接地引起了过度使用包装材料和缓冲材料,从而加剧了环境和社会问题,例如废物处理压力和资源浪费。预防rhep的先决条件是识别它。本文讨论了三种典型的rhep(滴加,踢快速和投掷)。对于这些类型的Rhep,提出了一种智能识别方法。主要思想是窗口窗口包装的加速度数据并提取窗口中的功能,然后将这些特征数据排列为三维矩阵作为CNN的输入,最后获得识别结果。在该研究中,平均值,方差,峰,动态范围,短期能量和零交叉率被认为是在本文中处理的问题中的良好特征。特征数据以不同的特征占用不同的信道的方式组织。在统一通道内,三行对应于三个轴,并且时间窗口顺序对应于连续列。这种特征数据的这种布置可以充分利用卷积操作来利用时序列特性和空间特性来挖掘加速信号的潜在信息。实验结果表明,该方法的识别准确性稳定地达到93.2-96.12%,比直接将功能直接安排到向量中并将其发送到完全连接的网络(识别精度为85-95%并波动) 。将这种方法的识别结果与Rhep的时间和地位相结合,可以更清楚地分析Rhep的原因并提出有针对性的预防措施。 (c)2020 elestvier有限公司保留所有权利。

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