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, fruit infestations. This article presents a processing methodology for unsupervised foreign object detection based on dual-energy X-ray absorptiometry (DEXA). A foreign object is defined as a fragment of material with different X-ray attenuation properties than those belonging to the food product. 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 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. The samples were acquired from a conveyor belt in a food processing factory. 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, the overall accuracy of foreign object detection reaches 95%.
翻译:X射线成像是一种广泛使用的对农业食品进行非破坏性检查的技术。X射线成像的一种应用是,在食品样品中对外国物品进行自动、在线的探测,其中包括肉制品中的骨头碎片、鱼类和水果害虫中的塑料和金属碎片。本文章介绍了一种根据双能X射线吸收测量法(DEXA)进行不受监督的外国物体探测的加工方法。一种外国物体被界定为具有与食品产品相比不同X射线衰减特性的材料的碎片。一种新的厚度修正模型是作为DEXA数据的预处理技术引进的。这种模型的目的是将属于食品产品和水果害虫的图像中的区域同化,并在有外国物品的地方加强对比。用这种方式,外国物体的分解方法更适合噪音和缺乏对比。拟议方法适用于488个肉制品样品的数据集。样品是从食品加工厂的传送带中获取的。大约60 ⁇ 个样品中含有不同种类和大小的外国物体,其中约有95个是外国物品的样品,而外国样品的完整是外国样品的样品。