Deep learning has been evidenced to be a cutting-edge technology for big data scrutiny with a huge figure of effective cases in image processing, speech recognition, object detection, and so on. Lately, it has also been acquainted with in food science and business. In this paper, a fleeting overview of deep learning and detailly labelled the structure of some prevalent constructions of deep neural networks and the method for training a model is provided. Various techniques that used deep learning as the data analysis tool are analyzed to answer the complications and challenges in food sphere together with quality detection of fruits & vegetables. The precise difficulties, the datasets, the pre-processing approaches, the networks and fr...
Dietary disorders have increased dramatically in recent decades as a result of poor eating habits. M...
The use of machine learning for visual food ingredient recognition has been at the forefront in rece...
Supervised deep learning-based foreign object detection algorithms are tedious, costly, and time-con...
Food safety has been a major concern in recent years as a result of numerous food safety events in m...
accep ine 5 Learning techniques have been applied increasingly for food quality evaluation using com...
Food Recognition is an essential topic in the area of computer of its target applications is to avoi...
We evaluated the effectiveness in classifying food images of a deep-learning approach based on the s...
n this paper we advocate the application of Artificial Intelligence techniques to quality assessment...
Automatic image-based food recognition is a particularly challenging task. Traditional image analysi...
Deep learning is a trending field in bioinformatics; so far, mostly known for image processing and s...
A succession of improvements in image processing have been aided by deep learning. There were consid...
The agri-food sector is an endless source of expansion for nourishing a vast population, but there i...
The popular technology used in this innovative era is Computer vision for fruit recognition. Compare...
Emerging technologies such as computer vision and Artificial Intelligence (AI) are estimated to leve...
Dietary disorders have increased dramatically in recent decades as a result of poor eating habits. M...
Dietary disorders have increased dramatically in recent decades as a result of poor eating habits. M...
The use of machine learning for visual food ingredient recognition has been at the forefront in rece...
Supervised deep learning-based foreign object detection algorithms are tedious, costly, and time-con...
Food safety has been a major concern in recent years as a result of numerous food safety events in m...
accep ine 5 Learning techniques have been applied increasingly for food quality evaluation using com...
Food Recognition is an essential topic in the area of computer of its target applications is to avoi...
We evaluated the effectiveness in classifying food images of a deep-learning approach based on the s...
n this paper we advocate the application of Artificial Intelligence techniques to quality assessment...
Automatic image-based food recognition is a particularly challenging task. Traditional image analysi...
Deep learning is a trending field in bioinformatics; so far, mostly known for image processing and s...
A succession of improvements in image processing have been aided by deep learning. There were consid...
The agri-food sector is an endless source of expansion for nourishing a vast population, but there i...
The popular technology used in this innovative era is Computer vision for fruit recognition. Compare...
Emerging technologies such as computer vision and Artificial Intelligence (AI) are estimated to leve...
Dietary disorders have increased dramatically in recent decades as a result of poor eating habits. M...
Dietary disorders have increased dramatically in recent decades as a result of poor eating habits. M...
The use of machine learning for visual food ingredient recognition has been at the forefront in rece...
Supervised deep learning-based foreign object detection algorithms are tedious, costly, and time-con...