4.7 Article

BLeafNet: A Bonferroni mean operator based fusion of CNN models for plant identification using leaf image classification

Journal

ECOLOGICAL INFORMATICS
Volume 69, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.ecoinf.2022.101585

Keywords

Plant identification; Leaf image; Deep learning; Ensemble learning; Bonferroni operator

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Funding

  1. Center for Microprocessor Applications for Training Education and Research (CMATER) research laboratory of the Computer Science and Engineering Department, Jadavpur Univer-sity, Kolkata, India

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This paper proposes a leaf image classification model, BLeafNet, for plant identification, combining the concepts of deep learning and Bonferroni fusion learning. By using different inputs and fusion operators, the model achieves superior results on multiple datasets.
Plants, the only natural source of oxygen, are the most important resources for every species in the world. A proper identification of plants is important for different fields. The observation of leaf characteristics is a popular method as leaves are easily available for examination. Researchers are increasingly applying image processing techniques for the identification of plants based on leaf images. In this paper, we have proposed a leaf image classification model, called BLeafNet, for plant identification, where the concept of deep learning is combined with Bonferroni fusion learning. Initially, we have designed five classification models, using ResNet-50 architecture, where five different inputs are separately used in the models. The inputs are the five variants of the leaf grayscale images, RGB, and three individual channels of RGB -red, green, and blue. For fusion of the five ResNet50 outputs, we have used the Bonferroni mean operator as it expresses better connectivity among the confidence scores, and it also obtains better results than the individual models. We have also proposed a two-tier training method for properly training the end-to-end model. To evaluate the proposed model, we have used the Malayakew dataset, collected at the Royal Botanic Gardens in New England, which is a very challenging dataset as many leaves from different species have a very similar appearance. Besides, the proposed method is evaluated using the Leafsnap and the Flavia datasets. The obtained results on both the datasets confirm the superiority of the model as it outperforms the results achieved by many state-of-the-art models.

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