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Classify Broiler Viscera Using an Iterative Approach on Noisy Labeled Training Data

机译:使用带噪标签的训练数据的迭代方法对肉鸡内脏进行分类

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Poultry meat is produced and slaughtered at higher and higher rates and the manual food safety inspection is now becoming the bottleneck. An automatic computer vision system could not only increase the slaughter rates but also lead to a more consistent inspection. This paper presents a method for classifying broiler viscera into healthy and unhealthy, in a data set recorded in-line at a poultry processing plant. The results of the on-site manual inspection are used to automatically label the images during the recording. The data set consists of 36,228 images of viscera. The produced labels are noisy, so the labels in the training set are corrected through an iterative approach and ultimately used to train a convolutional neural network. The trained model is tested on a ground truth data set labelled by experts in the field. A classification accuracy of 86% was achieved on a data set with a large in-class variation.
机译:家禽肉的生产和屠宰率越来越高,而手动食品安全检查现在正成为瓶颈。自动计算机视觉系统不仅可以提高屠宰率,而且可以使检查更加一致。本文介绍了一种在家禽加工厂在线记录的数据集中将肉鸡内脏分类为健康和不健康的方法。现场手动检查的结果用于在记录过程中自动标记图像。数据集包括36,228内脏图像。产生的标签很吵,因此训练集中的标签通过迭代方法进行校正,并最终用于训练卷积神经网络。经过训练的模型在由该领域专家标记的地面真实数据集上进行测试。在具有较大的同类差异的数据集上,分类精度达到86%。

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