A Real-time Junk Food Recognition System based on Machine Learning
Sirajum Munira Shifat, Takitazwar Parthib, Sabikunnahar Talukder, Pyaasa, Nila Maitra Chaity, Niloy Kumar, Md. Kishor Morol

TL;DR
This paper presents a real-time junk food recognition system using CNNs trained on a custom dataset, achieving high accuracy to promote healthier eating habits through image-based detection.
Contribution
The study introduces a new dataset and applies CNN technology, specifically YOLOv3, for effective real-time junk food recognition with high accuracy.
Findings
Achieved 98.05% accuracy in junk food classification
Developed a unique dataset of 10,000 images across 20 junk food categories
Demonstrated successful real-time detection in practical scenarios
Abstract
As a result of bad eating habits, humanity may be destroyed. People are constantly on the lookout for tasty foods, with junk foods being the most common source. As a consequence, our eating patterns are shifting, and we're gravitating toward junk food more than ever, which is bad for our health and increases our risk of acquiring health problems. Machine learning principles are applied in every aspect of our lives, and one of them is object recognition via image processing. However, because foods vary in nature, this procedure is crucial, and traditional methods like ANN, SVM, KNN, PLS etc., will result in a low accuracy rate. All of these issues were defeated by the Deep Neural Network. In this work, we created a fresh dataset of 10,000 data points from 20 junk food classifications to try to recognize junk foods. All of the data in the data set was gathered using the Google search…
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Taxonomy
TopicsNutritional Studies and Diet · Advanced Chemical Sensor Technologies · Consumer Attitudes and Food Labeling
MethodsBNB Customer Service Number +1-833-534-1729 · Average Pooling · Global Average Pooling · Residual Connection · Batch Normalization · Softmax · 1x1 Convolution · Logistic Regression · k-Means Clustering · YOLOv3
