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Research on vehicle apparent damage assessment technology based on intelligent regression calculation

机译:基于智能回归计算的车辆表观损伤评估技术研究

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Aiming at the requirements of effective assessment and accurate quantification of vehicle target apparent damage degree in war, natural disasters and other environments, this paper presents a damage assessment technique based on deep learning regression calculation. First, the image containing vehicle target is preprocessed by scale adjustment, segmentation and graying. Then, extracting and fusing the high-dimensional features of the preprocessed image through the deep convolution neural network. At last, obtaining the evaluation value of vehicle target damage degree through the fusion feature calculation of full connection regression network. In this paper, the automobile target is taken as the experimental object, and completing the relevant data collection, training and testing. The experimental results show the accuracy and effectiveness of this method for vehicle target apparent damage degree evaluation.
机译:旨在对战争,自然灾害等环境的有效评估和准确量化的有效评估和准确量化,本文提出了一种基于深度学习回归计算的损伤评估技术。 首先,通过比例调整,分割和灰色预处理含有车辆目标的图像。 然后,通过深卷积神经网络提取和融合预处理图像的高维特征。 最后,通过全连接回归网络的融合特征计算获得车辆目标损坏程度的评估值。 在本文中,汽车目标被视为实验对象,并完成相关数据收集,培训和测试。 实验结果表明了这种用于车辆目标表观损伤程度评价的方法的准确性和有效性。

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