Deep learning in food category recognition
Metadatos
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Universidad de Granada
Materia
Machine learning Deep learning Data augmentation Food category recognition Computer vision Semi-supervised learning Convolutional Neural Networks Transfer learning
Fecha
2023-05-27Referencia bibliográfica
Y. Zhang et al. Deep learning in food category recognition. Information Fusion 98 (2023) 101859[https://doi.org/10.1016/j.inffus.2023.101859]
Patrocinador
MRC (MC_PC_17171); Royal Society (RP202G0230); BHF (AA/18/3/34220); Hope Foundation for Cancer Research (RM60G0680); GCRF (P202PF11); Sino-UK Industrial Fund (RP202G0289); LIAS (P202ED10; Data Science Enhancement Fund (P202RE237); Fight for Sight (24NN201);; Sino-UK Education Fund (OP202006); BBSRC (RM32G0178B8)Resumen
Integrating artificial intelligence with food category recognition has been a field of interest for research for the
past few decades. It is potentially one of the next steps in revolutionizing human interaction with food. The
modern advent of big data and the development of data-oriented fields like deep learning have provided advancements
in food category recognition. With increasing computational power and ever-larger food datasets,
the approach’s potential has yet to be realized. This survey provides an overview of methods that can be applied
to various food category recognition tasks, including detecting type, ingredients, quality, and quantity. We
survey the core components for constructing a machine learning system for food category recognition, including
datasets, data augmentation, hand-crafted feature extraction, and machine learning algorithms. We place a
particular focus on the field of deep learning, including the utilization of convolutional neural networks, transfer
learning, and semi-supervised learning. We provide an overview of relevant studies to promote further developments
in food category recognition for research and industrial applications
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