PROPOSED ENHANCED FEATURE EXTRACTION FOR MULTI-FOOD DETECTION METHOD
Researcher Name
Adai Mohammad Al-Momani
Name Of Journal
Journal of Theoretical and Applied Information Tec
Volume No.
101/24/8140-8146
Date Of Publication
2023.12
Abstract
This research presents a comprehensive system that utilizes computer vision and deep learning techniques to
develop the detection of multiple food methods. Despite the incorporation of deep learning techniques, the
effectiveness of the existing detection method for different food products is unsatisfactory due to
the utilization of ResNet-101 for feature extraction. The features maps of the ResNet-101 exhibit a size
reduction or may vanish entirely following the down-sampling process. The ResNet-101 blocks may have
been subject to varying degrees of repetition, with certain blocks receiving a restricted number of repeats and
others being excessively repeated. There is an ongoing need to develop the rate of detection in the field of
food recognition. The procedure under consideration consists of a series of primary steps. The optimization
of the ResNet-101 block entails the careful selection of an appropriate number of repetitions. A
supplementary convolutional layer is suggested.