PEMANFAATAN EKSTRAK UBI UNGU SEBAGAI INDIKATOR LABEL DALAM PEMANTAUAN KESEGARAN UDANG MENGUNAKAN NEURAL NETWORK

Siswoyo Siswoyo, Anisah Mega Andini, Dea Amelia, Aisyah Deri Ayu Tungga Safitri, Yuant Tiandho
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Abstract

The main weakness in shrimp marketing is the perishable food nature of shrimp. Generally, people identify the freshness of shrimp by direct observation. However, it will be difficult to detect the freshness of shrimp if it is marketed in a closed container. In this study, a label indicator of purple sweet potato will be made to detect the freshness of shrimp. The increase in the efficiency of indicator readings is carried out using a neural network algorithm. The results of the sensitivity test showed that the label indicator of purple sweet potato extract was sensitive to the presence of ammonia.Through a comparison between the storage time of shrimp and the organoleptic quality of shrimp, it is known that the quality of shrimp is divided into four classes, namely: (i) "Very fresh" marked with a solid red color (ii) "Fresh marked with a deep blue color (iii) "not fresh marked with a dark red color. gray and (iv) “very unrefreshing marked with a faded brown color. Through label indicator image classification using a neural network algorithm, from 73 training data obtained an accuracy rate of 95.89% and a precision of 92%.
利用紫山药提取物作为神经网络监测淡水新鲜的标签
虾营销的主要弱点是虾的易腐食品性质。一般来说,人们通过直接观察来判断虾的新鲜度。然而,如果虾在封闭的容器中销售,将很难检测其新鲜度。本研究将制作紫甘薯的标签指标来检测虾的新鲜度。利用神经网络算法提高了指标读数的效率。敏感性试验结果表明,紫甘薯浸膏的标签指示剂对氨的存在敏感。通过对虾贮藏时间与对虾感官品质的比较可知,对虾的品质可分为四类,即:(i)以纯红色标记的“非常新鲜”(ii)"新鲜的深蓝色标记(iii)"不是新鲜的,有深红色的标记。灰色和(iv)“非常不清新,带有褪色的棕色。”通过使用神经网络算法对标签指标图像进行分类,从73个训练数据中获得准确率95.89%,精密度92%。
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