Interpretable Fish Classification through MobileNetV2 and Grad-CAM Visualization
Authors
Salma Akter Lima
(Computer Science and Engineering)
Abstract
Accurate classification of fish species is crucial for
monitoring biodiversity and managing fisheries sustainably. This
study introduces a deep learning approach leveraging a pretrained DenseNet201 architecture and transfer learning to classify
fish species from images accurately. Trained on over 10,000
images, the model achieved 99.89% accuracy, demonstrating
robustness with perfect scores on an extended dataset. Gradientweighted Class Activation Mapping (Grad-CAM) was employed
to confirm that the model focuses on biologically significant
features like body shape and fin placement, crucial for accurate
identification. These results highlight the model's potential as a
reliable tool for automated fish classification, supporting
ecological research and sustainable practices in marine
environments.