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Evolving CNN with Paddy Field Algorithm for Geographical Landmark Recognition

Kanishk Bansal, Amar Singh, Sahil Verma, Kavita Kavita, N. Z. Jhanjhi, Mohammad Shorfuzzaman, Mehedi Masud

2022Electronics23 citationsDOIOpen Access PDF

Abstract

Convolutional Neural Networks (CNNs) operate within a wide variety of hyperparameters, the optimization of which can greatly improve the performance of CNNs when performing the task at hand. However, these hyperparameters can be very difficult to optimize, either manually or by brute force. Neural architecture search or NAS methods have been developed to address this problem and are used to find the best architectures for the deep learning paradigm. In this article, a CNN has been evolved with a well-known nature-inspired metaheuristic paddy field algorithm (PFA). It can be seen that PFA can evolve the neural architecture using the Google Landmarks Dataset V2, which is one of the toughest datasets available in the literature. The CNN’s performance, when evaluated based on the accuracy benchmark, increases from an accuracy of 0.53 to 0.76, which is an improvement of more than 40%. The evolved architecture also shows some major improvements in hyperparameters that are normally considered to be the best suited for the task.

Topics & Concepts

HyperparameterComputer scienceConvolutional neural networkBenchmark (surveying)Artificial intelligenceTask (project management)Field (mathematics)Machine learningLandmarkDeep learningPattern recognition (psychology)ArchitectureEngineeringMathematicsVisual artsGeographyGeodesyArtSystems engineeringPure mathematicsAdvanced Neural Network ApplicationsMachine Learning and Data ClassificationSmart Agriculture and AI
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