MorphoNet: A Novel Bivalve Images Classification Framework with Convolutional Neural Network
DOI:
https://doi.org/10.4186/ej.2023.27.9.71Keywords:
image processing, morphometrics, bivalves image, deep learning, MobileNetAbstract
The bivalves' morphometric analysis of the freshwater shell characteristics is based on the shell size, shape, tooth, scars, and texture. We experimented and compared the accuracies of the following popular convolutional neural network architectures: ResNeSt, MobileNet, VGG16, Transfer Learning, and EfficientNet, whose model trainings are based on the bivalve image dataset obtained from a biology laboratory. The MobileNet model that gives the highest accuracy rate by 72% is selected to be a classification model of our framework named MorphoNet. We also applied the YOLO4 object detection in the MorphoNet to detect the teeth and scars on the bivalve image. The framework can identify the bivalve class labels and detect the interesting features on the bivalve images automatically. It is an alternative tool to help the biologists in a preliminary class label identification and support the land-marking creation and morphometric analysis instead of doing it by hand.
Downloads
Downloads
Authors who publish with Engineering Journal agree to transfer all copyright rights in and to the above work to the Engineering Journal (EJ)'s Editorial Board so that EJ's Editorial Board shall have the right to publish the work for nonprofit use in any media or form. In return, authors retain: (1) all proprietary rights other than copyright; (2) re-use of all or part of the above paper in their other work; (3) right to reproduce or authorize others to reproduce the above paper for authors' personal use or for company use if the source and EJ's copyright notice is indicated, and if the reproduction is not made for the purpose of sale.