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LS-Net: a convolutional neural network for leaf segmentation of rosette plants

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Abstract

Leaf segmentation from plant images is a challenging task, especially when multiple leaves are overlap** in images with a complex background. Recently, deep learning-based methods have demonstrated their effectiveness in the realm of image segmentation. In this study, a novel convolutional neural network called LS-Net has been proposed for the leaf segmentation of rosette plants. The experiment is performed over 2010 images from the plant phenoty** (CVPPP) and KOMATSUNA datasets. The segmentation ability of the LS-Net has been investigated by comparing it with four recently applied existing CNN-based segmentation models, namely DeepLab V3 + , Seg Net, Fast-FCN with Pyramid Pooling Module, and U-Net. The analysis of the experimental results clearly demonstrates the superiority of the proposed LS-Net to other tested CNN models.

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MD contributed to conceptualization, methodology, and software. AG contributed to visualization, investigation, and validation. AD involved to writing—original draft preparation. KGD involved in supervision and writing—reviewing and editing.

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Correspondence to Krishna Gopal Dhal.

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Deb, M., Garai, A., Das, A. et al. LS-Net: a convolutional neural network for leaf segmentation of rosette plants. Neural Comput & Applic 34, 18511–18524 (2022). https://doi.org/10.1007/s00521-022-07479-9

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