
Deep learning based Food Recognition using Tensorflow
Author(s) -
K. Abirami,
M ManojKumar,
Mohammed Insaf,
N. R. Sakthivel
Publication year - 2021
Publication title -
journal of physics. conference series
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.21
H-Index - 85
eISSN - 1742-6596
pISSN - 1742-6588
DOI - 10.1088/1742-6596/1916/1/012149
Subject(s) - artificial intelligence , machine learning , computer science , retraining , class (philosophy) , international trade , business
Cutting edge profound learning models for food acknowledgment don’t permit information steady taking in and frequently experience the ill effects of cataclysmic impedance issues during the class gradual learning. This is a significant issue in food acknowledgment since certifiable food datasets are open-finished and dynamic, including a persistent expansion in food tests and food classes. Model retraining is frequently done to adapt to the powerful idea of the information, yet this requests very good quality computational assets and critical time. This paper proposes another open-finished ceaseless learning system by utilizing move learning on profound models for include extraction, Relief F for highlight determination, and a novel versatile decreased class steady portion extraordinary learning machine (ARCIKELM) for characterization. Move learning is gainful because of the great speculation capacity of profound learning highlights. Alleviation F lessens computational intricacy by positioning and choosing the extricated highlights. The tale ARCIKELM classifier progressively changes network design to decrease calamitous neglect. It tends to space variation issues when new examples of the current class show up. To direct complete analyses, we thought about the model in contrast to four standard food benchmarks and an as of late gathered Pakistani food dataset. Test results show that the proposed structure learns new classes steadily with less calamitous induction and adjusts space changes while having serious characterization execution.