Aditya Singh, Kislay Raj, Teerath Meghwar, Arunabha M. Roy
{"title":"Efficient Paddy Grain Quality Assessment Approach Utilizing Affordable Sensors","authors":"Aditya Singh, Kislay Raj, Teerath Meghwar, Arunabha M. Roy","doi":"10.3390/ai5020036","DOIUrl":null,"url":null,"abstract":"Paddy (Oryza sativa) is one of the most consumed food grains in the world. The process from its sowing to consumption via harvesting, processing, storage and management require much effort and expertise. The grain quality of the product is heavily affected by the weather conditions, irrigation frequency, and many other factors. However, quality control is of immense importance, and thus, the evaluation of grain quality is necessary. Since it is necessary and arduous, we try to overcome the limitations and shortcomings of grain quality evaluation using image processing and machine learning (ML) techniques. Most existing methods are designed for rice grain quality assessment, noting that the key characteristics of paddy and rice are different. In addition, they have complex and expensive setups and utilize black-box ML models. To handle these issues, in this paper, we propose a reliable ML-based IoT paddy grain quality assessment system utilizing affordable sensors. It involves a specific data collection procedure followed by image processing with an ML-based model to predict the quality. Different explainable features are used for classifying the grain quality of paddy grain, like the shape, size, moisture, and maturity of the grain. The precision of the system was tested in real-world scenarios. To our knowledge, it is the first automated system to precisely provide an overall quality metric. The main feature of our system is its explainability in terms of utilized features and fuzzy rules, which increases the confidence and trustworthiness of the public toward its use. The grain variety used for experiments majorly belonged to the Indian Subcontinent, but it covered a significant variation in the shape and size of the grain.","PeriodicalId":503525,"journal":{"name":"AI","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2024-05-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"AI","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3390/ai5020036","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Paddy (Oryza sativa) is one of the most consumed food grains in the world. The process from its sowing to consumption via harvesting, processing, storage and management require much effort and expertise. The grain quality of the product is heavily affected by the weather conditions, irrigation frequency, and many other factors. However, quality control is of immense importance, and thus, the evaluation of grain quality is necessary. Since it is necessary and arduous, we try to overcome the limitations and shortcomings of grain quality evaluation using image processing and machine learning (ML) techniques. Most existing methods are designed for rice grain quality assessment, noting that the key characteristics of paddy and rice are different. In addition, they have complex and expensive setups and utilize black-box ML models. To handle these issues, in this paper, we propose a reliable ML-based IoT paddy grain quality assessment system utilizing affordable sensors. It involves a specific data collection procedure followed by image processing with an ML-based model to predict the quality. Different explainable features are used for classifying the grain quality of paddy grain, like the shape, size, moisture, and maturity of the grain. The precision of the system was tested in real-world scenarios. To our knowledge, it is the first automated system to precisely provide an overall quality metric. The main feature of our system is its explainability in terms of utilized features and fuzzy rules, which increases the confidence and trustworthiness of the public toward its use. The grain variety used for experiments majorly belonged to the Indian Subcontinent, but it covered a significant variation in the shape and size of the grain.
水稻(Oryza sativa)是世界上消耗量最大的粮食作物之一。从播种到收割、加工、储存和管理等消费过程都需要大量的努力和专业知识。谷物的质量在很大程度上受天气条件、灌溉频率和许多其他因素的影响。然而,质量控制极为重要,因此,对谷物质量进行评估是必要的。鉴于其必要性和艰巨性,我们尝试使用图像处理和机器学习(ML)技术来克服谷物质量评价的局限性和缺陷。由于水稻和大米的主要特征不同,现有的大多数方法都是针对稻谷品质评估而设计的。此外,这些方法的设置复杂且昂贵,并使用黑盒子 ML 模型。为了解决这些问题,我们在本文中提出了一种可靠的基于 ML 的物联网稻谷质量评估系统,该系统利用了经济实惠的传感器。该系统包括一个特定的数据收集程序,然后利用基于 ML 的模型进行图像处理,以预测质量。该系统使用不同的可解释特征对稻谷质量进行分类,如稻谷的形状、大小、水分和成熟度。该系统的精确度在实际场景中进行了测试。据我们所知,这是首个能够精确提供整体质量指标的自动化系统。我们系统的主要特点是利用特征和模糊规则进行解释,这增加了公众对其使用的信心和可信度。用于实验的谷物品种主要属于印度次大陆,但谷物的形状和大小差异很大。