A comprehensive approach to detecting chemical adulteration in fruits using computer vision, deep learning, and chemical sensors

Abdus Sattar , Md. Asif Mahmud Ridoy , Aloke Kumar Saha , Hafiz Md. Hasan Babu , Mohammad Nurul Huda
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Abstract

Contamination of harmful additives in fruits has become a concerning norm these days. Owing to the great popularity of fruits, dishonest vendors frequently use harmful chemicals to contaminate fruits to extend their shelf life, which is extremely dangerous for the general public's health. To mitigate this issue, machine-learning algorithms like Decision Tree Classifier, Naïve Bayes and a deep learning model named “DurbeenNet” are evaluated separately. Alongside, a computer vision-based detection method coupled with a hybrid model is proposed that combines deep learning and chemical sensor. Formaldehyde Detection Sensor is used in this experiment to take reading of the sensor data. Mango, Apple, Banana, and Malta are taken as sample fruits in this study. Sensor data for both fresh and chemical-mixed fruit is newly collected using Formaldehyde Detection Sensor. The above mentioned sensor data along with the previously captures images of both fresh and chemical-mixed state are being integrated to a hybrid model. Among two machine learning algorithms naïve bayes come up with 82 % accuracy. Using both sensor data and captured image data, the proposed model “SensorNet” provides highest accuracy of 97.03 % which is substantial than “DurbeenNet” model's accuracy. Through the utilization of these fruit samples, formaldehyde detection sensor provides instantaneous detection, identifying the specific toxic substances present in the contaminated fruits.

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利用计算机视觉、深度学习和化学传感器检测水果化学掺假的综合方法
如今,水果中的有害添加剂污染已成为一种令人担忧的常态。由于水果非常受欢迎,不诚实的商贩经常使用有害化学物质来污染水果,以延长其保质期,这对公众的健康造成了极大的危害。为了缓解这一问题,我们分别评估了决策树分类器、奈夫贝叶斯和名为 "DurbeenNet "的深度学习模型等机器学习算法。同时,还提出了一种基于计算机视觉的检测方法,并结合了深度学习和化学传感器的混合模型。本实验使用甲醛检测传感器读取传感器数据。本研究以芒果、苹果、香蕉和马耳他为样本水果。使用甲醛检测传感器收集新鲜水果和化学混合水果的传感器数据。上述传感器数据与之前捕捉到的新鲜水果和化学混合水果的图像将被整合到一个混合模型中。在两种机器学习算法中,天真贝叶斯算法的准确率高达 82%。利用传感器数据和捕获的图像数据,所提出的 "SensorNet "模型的准确率最高,达到 97.03%,大大高于 "DurbeenNet "模型的准确率。通过利用这些水果样本,甲醛检测传感器可提供即时检测,识别受污染水果中存在的特定有毒物质。
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