基于Inception V3的随机挑瓶任务中部分可见图像的品牌识别

Chen Zhu, T. Matsumaru
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引用次数: 1

摘要

在品牌随机有序饮用PET拣瓶任务中,重叠和视角问题导致品牌识别准确率较低。本文以提高品牌识别准确率为目标,研究重叠率对品牌识别准确率的影响。采用步进电机和透明夹具,在360度下自动从瓶子上拍摄训练图像,模拟从视角拍摄的图像。然后,对图像进行随机裁剪和旋转增强,模拟实际应用中的重叠和旋转。通过使用自动构建的数据集,对从ImageNet迁移过来的Inception V3进行品牌识别训练。通过在原始图像上生成具有特定重叠率的随机掩模,当图像中45%的物体可见时,Inception V3的准确率可以达到80%,当重叠率低于30%时,准确率可以达到86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brand Recognition with Partial Visible Image in the Bottle Random Picking Task based on Inception V3
In the brand-wise random-ordered drinking PET bottles picking task, the overlapping and viewing angle problem makes a low accuracy of the brand recognition. In this paper, we set the problem to increase the brand recognition accuracy and try to find out how the overlapping rate infects on the recognition accuracy. By using a stepping motor and transparent fixture, the training images were taken automatically from the bottles under 360 degrees to simulate a picture taken from viewing angle. After that, the images are augmented with random cropping and rotating to simulate the overlapping and rotation in a real application. By using the automatically constructed dataset, the Inception V3, which was transferred learning from ImageNet, is trained for brand recognition. By generating a random mask with a specific overlapping rate on the original image, the Inception V3 can give 80% accuracy when 45% of the object in the image is visible or 86% accuracy when the overlapping rate is lower than 30%.
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