Fat calculation from raw-beef-steak images through machine learning approaches: an end-to-end pipeline

Georgios Symeonidis, C. Kiourt, N. Kazakis, Evangelos Nerantzis, Tsirliganis Nestor
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Abstract

The livestock meat and its nutrition quality is considered to be an important factor in our daily eating habits giving particular emphasis to health issues. The quality and the nutrition value of a raw-beef-steak, is highly connected with the fat percentage of it. Consequently, the determination of the fat percentage of a raw-beef-steak is crucial for meat producers and consumers as well. In this work, we present a fat mass estimation approach based on a state-of-the-art deep learning pipeline by utilizing a single colored image presenting raw-beef-steak. In order to produce more accurate outcomes, our pipeline combines two U-Nets, one for the background removal and one for the fat extraction. By following popular computational approaches we estimate the fat amount based on the pixels presenting it. To enhance the outcomes of this work, we introduce a new data-set annotated based on the needs of the experiment. The main goal of this work is to provide accurate nutritional information to end-users through novel technologies by exploiting a single image through a mobile application.
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通过机器学习方法从生牛排图像中计算脂肪:端到端管道
畜禽肉及其营养质量被认为是我们日常饮食习惯的一个重要因素,特别强调健康问题。生牛排的质量和营养价值与它的脂肪含量密切相关。因此,确定生牛排的脂肪百分比对肉类生产商和消费者都是至关重要的。在这项工作中,我们提出了一种基于最先进的深度学习管道的脂肪质量估计方法,该方法利用呈现生牛排的单色图像。为了产生更准确的结果,我们的管道结合了两个u - net,一个用于背景去除,一个用于脂肪提取。通过遵循流行的计算方法,我们根据表示它的像素估计脂肪量。为了提高这项工作的结果,我们引入了一个基于实验需要的新数据集。这项工作的主要目标是通过移动应用程序利用单个图像,通过新技术为最终用户提供准确的营养信息。
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