Andriiashen Vladyslav, van Liere Robert, van Leeuwen Tristan, Batenburg Kees Joost
Centrum Wiskunde & Informatica, Science Park 123, 1098 XG Amsterdam, The Netherlands.
Faculteit Wiskunde en Informatica, Technical University Eindhoven, Groene Loper 5, 5612 AZ Eindhoven, The Netherlands.
J Imaging. 2021 Jun 24;7(7):104. doi: 10.3390/jimaging7070104.
X-ray imaging is a widely used technique for non-destructive inspection of agricultural food products. One application of X-ray imaging is the autonomous, in-line detection of foreign objects in food samples. Examples of such inclusions are bone fragments in meat products, plastic and metal debris in fish, and fruit infestations. This article presents a processing methodology for unsupervised foreign object detection based on dual-energy X-ray absorptiometry (DEXA). A novel thickness correction model is introduced as a pre-processing technique for DEXA data. The aim of the model is to homogenize regions in the image that belong to the food product and to enhance contrast where the foreign object is present. In this way, the segmentation of the foreign object is more robust to noise and lack of contrast. The proposed methodology was applied to a dataset of 488 samples of meat products acquired from a conveyor belt. Approximately 60% of the samples contain foreign objects of different types and sizes, while the rest of the samples are void of foreign objects. The results show that samples without foreign objects are correctly identified in 97% of cases and that the overall accuracy of foreign object detection reaches 95%.
X射线成像技术是一种广泛应用于农产品无损检测的技术。X射线成像的一个应用是对食品样本中的异物进行自动在线检测。此类夹杂物的例子包括肉制品中的骨碎片、鱼类中的塑料和金属碎片以及水果虫害。本文提出了一种基于双能X射线吸收法(DEXA)的无监督异物检测处理方法。引入了一种新颖的厚度校正模型作为DEXA数据的预处理技术。该模型的目的是使图像中属于食品的区域均匀化,并增强存在异物区域的对比度。通过这种方式,异物的分割对噪声和对比度不足更加稳健。所提出的方法应用于从传送带上采集的488个肉制品样本数据集。大约60%的样本包含不同类型和大小的异物,而其余样本没有异物。结果表明,在97%的情况下,没有异物的样本能够被正确识别,异物检测的总体准确率达到95%。