Detection of Freshness of Fish using Machine Learning Techniques on Vyas Municipality, Nepal

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Abstract

The historical narrative of the fish trade is well-document in various sources. However, the concerning prevalence of fish traders vending spoiled fish poses a significant threat to human health, prompting specific research inquiries. The study aimed to address key questions: What quality of healthy fish do traders sell? How effective are their fish storage methods? What's the duration between fish purchase and consumer access? The study objectives were devised to uncover a actual condition of the fish on sale, assess storage practices, and determine the selling timeline. To achieve these aims, the study employed the EfficientNetB1 machine learning model, chosen for its simplicity and high accuracy. Five fish shops and traders from wards 1,2,3 and 4 in Damauli, the primary city of Vyas Municipality in Nepal, were selected for investigation. Results from five main city shops in Damauli revealed that only 26% of the fish were deemed healthy, while a concerning 74% were identified as rotten. Similarly, within the sample, 44% of the fish were healthy, while 56% were spoiled. This study unveiled that fish were being sold even up to 15 days post-purchase, employing ice packs, refrigeration, and potentially chemicals for storage. These findings highlight the urgent need for ongoing monitoring by relevant stakeholders and local government entities to address this issue effectively.
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利用机器学习技术检测尼泊尔维亚斯市的鱼类新鲜度
关于鱼类贸易的历史故事在各种资料中都有详细记载。然而,令人担忧的是,鱼贩贩卖变质鱼的现象十分普遍,对人类健康构成了重大威胁,这促使人们进行专门的研究调查。这项研究旨在解决以下关键问题鱼贩出售的健康鱼质量如何?他们储存鱼的方法有多有效?购买鱼类和消费者获得鱼类之间的时间间隔有多长?研究的目标是揭示销售鱼类的实际状况,评估储存方法,并确定销售时间。为实现这些目标,研究采用了 EfficientNetB1 机器学习模型,该模型因其简单易用和高准确性而被选中。研究选取了尼泊尔维亚斯市主城区达毛利 1、2、3 和 4 区的五家鱼店和鱼贩进行调查。来自达毛利市五个主要城市商店的结果显示,只有 26% 的鱼被认为是健康的,而 74% 的鱼被认定为腐烂。同样,在样本中,44%的鱼是健康的,56%的鱼是腐烂变质的。这项研究揭示出,鱼类甚至在购买后 15 天内仍在出售,并使用冰袋、冷藏设备和可能的化学品进行储存。这些发现突出表明,相关利益攸关方和地方政府实体迫切需要进行持续监测,以有效解决这一问题。
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