面向采后存储系统中计算机视觉与应用人工智能的集成:无创收获作物监测

Ronnie S. Concepcion, Llewelyn S. Moron, I. Valenzuela, Jonnel D. Alejandrino, R. R. Vicerra, A. Bandala, E. Dadios
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引用次数: 1

摘要

农业生产系统并不以作物的实际收获结束,而是延伸到收获后系统,主要包括作物的储存、销售和运输。然而,温度和湿度直接影响储存农产品的质量。在像菲律宾这样的热带国家,番茄、生菜和其他薄皮、高度湿润的作物会随着时间的推移而降低其质量,并经历形状变形。本研究是智能采后存储系统的主题分类法,讨论了农产品表型分析技术和新兴需求,基于计算机视觉的采后系统的发展趋势,采后系统中人工智能的集成,智能存储系统的当前问题,挑战和相应的未来方向。在系统分析的基础上,粮食储存系统的技术建模和作物采后品质分级是有效储存粮食供人类消费的新挑战。研究发现,需要一种无创、高通量的方法来评价食品的质量和保质期。这可以通过基于视觉的水果和蔬菜质量分级和存储室中基于视觉的自适应控制来实现。总体而言,计算机视觉与人工智能相结合可以使智能采后存储系统具有可持续性,可盈利且易于实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards the Integration of Computer Vision and Applied Artificial Intelligence in Postharvest Storage Systems: Non-invasive Harvested Crop Monitoring
Agricultural production system does not end with the actual harvesting of crops rather it extends to the postharvest system which primarily consists of crop storing, marketing, and transportation. However, temperature and humidity directly affect the quality of stored agricultural products. In a tropical country like the Philippines, tomato, lettuce, and other thin-skinned and highly moist crops degrade its quality and experience shape deformation over time. This study is a thematic taxonomy of intelligent postharvest storage systems discussing the techniques in the phenotyping of agricultural produce and emerging needs, trends in computer-vision-based postharvest systems, integration of artificial intelligence in postharvest systems, the current issues, challenges, and corresponding future directives in intelligent storage systems. Based on the systematic analysis, technical modeling of the storage system and postharvest crop quality grading are the emerging challenges in effectively storing crops for human consumption. It was found out that non-invasive high throughput methods for evaluation of quality and shelf life are needed. This can be done through vision-based fruit and vegetable quality grading and vision-based adaptive controls in the storage chamber. Overall, computer vision allied with artificial intelligence can make an intelligent postharvest storage system that is sustainable, profitable, and easy to implement.
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