Title: Food recognition using enhanced squirrel search optimisation algorithm and convolutional neural network
Authors: Megha Chopra; Archana Purwar
Addresses: Department of Computer Science Engineering and Information Technology, Jaypee Institute of Information Technology, A-10, Sector 62 Noida-201309, India ' Department of Computer Science Engineering and Information Technology, Jaypee Institute of Information Technology, A-10, Sector 62 Noida-201309, India
Abstract: Owning to the sedentary lifestyle, dietary assessment has become a significant research area. Automated food assessment initiates with food classification. Image classification commences with segmentation. Apparently, thresholding is the elemental method to perform segmentation. Although, there are many ways to optimise the solution of multi-level thresholding, this paper proposes a squirrel search algorithm (SSA)-based optimised solution for multi-level thresholding. It applies convolutional neural network (CNN) to recognise food images. Further, the paper has proposed a new enhanced squirrel search algorithm (ESSA) to improve the food recognition accuracy. The results show that ESSA improves the performance of image segmentation and classification. The performance of the proposed algorithm is evaluated using food datasets UEC-256 and UEC-100 and accuracy of 83.1% and 82.1% was obtained respectively. Proposed algorithm is also compared with existing work taken under this study and it has been observed that it outperformed them.
Keywords: food recognition; squirrel search algorithm; SSA; enhanced squirrel search algorithm; ESSA; thresholding; segmentation.
DOI: 10.1504/IJDATS.2023.133023
International Journal of Data Analysis Techniques and Strategies, 2023 Vol.15 No.3, pp.238 - 254
Received: 22 Jun 2022
Accepted: 23 Oct 2022
Published online: 24 Aug 2023 *