Monitoring Visual Properties of Food in Real Time During Food Drying

IF 5.3 2区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Anthony C. Iheonye, Vijaya Raghavan, Frank P. Ferrie, Valérie Orsat, Yvan Gariepy
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引用次数: 1

Abstract

Annually , one-third of the food produced globally is lost or wasted. A considerable portion of global food waste comprises dry foods that are rejected due to their unattractive appearance. One effective technique to solve this problem is by developing dryers that consistently produce dry foods that are visually appealing and have a long shelf life. The beating heart of such dryers is a computer vision (CV) system that monitors the visual attributes of the food, in real time, during the drying process. Unfortunately, there are currently no real-time CV systems for monitoring the visual attributes of food during fluidized bed drying. This setback is linked to figure-ground separation challenges encountered while segmenting real-time images of the food. Sadly, when current CV systems are used to monitor visual attributes of food during fluidized bed drying, these CV systems fail miserably because they are not designed to account for three major dryer-dependent determinants—the layout, the state and pattern of motion, and the behavior of food materials within the image captured during fluidized bed drying. To solve this lingering problem, this paper reviewed various computer vision systems based on the three determinants. This study revealed that input images for the different CV systems can be categorized as being either static-type images or chaotic-type images. The CV systems were grouped into “Static-input offline CV systems,” “Static-input online CV systems,” and “Chaotic-input online CV systems.” Building on the insight gained while reviewing the three classes of CV systems, two novel AI-driven solutions for monitoring visual attributes of food, in real time, during fluidized bed drying were proposed. The first solution was a “two-pass” deep learning system that predicts visual attributes from segmented results. While the second solution was a “single-pass” deep learning system that by-passes the segmentation step, thus saving computational cost. When such AI-driven solutions are merged with a control system and then integrated with fluidized bed dryers, this union could open the gateway to intelligent drying, where dryers consistently produce high-quality dry foods. By extension, consistency in product quality could reduce global food losses and waste significantly.

Abstract Image

食品干燥过程中视觉特性的实时监测
每年,全球生产的粮食中有三分之一被损失或浪费。全球食物浪费中有相当一部分是由于外观不美观而被拒绝的干食物。解决这个问题的一个有效方法是开发干燥机,使干燥的食物在视觉上具有吸引力,并且保质期长。这种烘干机的核心是一个计算机视觉(CV)系统,该系统在干燥过程中实时监控食物的视觉属性。不幸的是,目前还没有实时的CV系统来监测流化床干燥过程中食品的视觉属性。这种挫折与在分割食物的实时图像时遇到的图地分离问题有关。可悲的是,当当前的CV系统用于监测流化床干燥过程中食物的视觉属性时,这些CV系统失败得很惨,因为它们没有考虑到三个主要的干燥器相关决定因素——布局、运动状态和模式,以及在流化床干燥过程中捕获的图像中食物材料的行为。为了解决这一挥之不去的问题,本文综述了基于这三个决定因素的各种计算机视觉系统。研究表明,不同CV系统的输入图像可以分为静态型图像和混沌型图像。将CV系统分为“静态输入离线CV系统”、“静态输入在线CV系统”和“混沌输入在线CV系统”。在回顾三类CV系统时获得的见解的基础上,提出了两种新的ai驱动的解决方案,用于在流化床干燥过程中实时监测食品的视觉属性。第一个解决方案是一个“两步”深度学习系统,它可以从分割的结果中预测视觉属性。而第二种解决方案是“单遍”深度学习系统,它绕过了分割步骤,从而节省了计算成本。当这种人工智能驱动的解决方案与控制系统合并,然后与流化床干燥机集成时,这种结合可以打开智能干燥的大门,干燥机可以始终如一地生产高质量的干燥食品。推而广之,产品质量的一致性可以显著减少全球粮食损失和浪费。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Food Engineering Reviews
Food Engineering Reviews FOOD SCIENCE & TECHNOLOGY-
CiteScore
14.20
自引率
1.50%
发文量
27
审稿时长
>12 weeks
期刊介绍: Food Engineering Reviews publishes articles encompassing all engineering aspects of today’s scientific food research. The journal focuses on both classic and modern food engineering topics, exploring essential factors such as the health, nutritional, and environmental aspects of food processing. Trends that will drive the discipline over time, from the lab to industrial implementation, are identified and discussed. The scope of topics addressed is broad, including transport phenomena in food processing; food process engineering; physical properties of foods; food nano-science and nano-engineering; food equipment design; food plant design; modeling food processes; microbial inactivation kinetics; preservation technologies; engineering aspects of food packaging; shelf-life, storage and distribution of foods; instrumentation, control and automation in food processing; food engineering, health and nutrition; energy and economic considerations in food engineering; sustainability; and food engineering education.
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