SWP-LeafNET: A novel multistage approach for plant leaf identification based on deep CNN
Ali Beikmohammadi, Karim Faez, Ali Motallebi

TL;DR
SWP-LeafNET introduces a multistage deep CNN approach for plant leaf identification, achieving high accuracy without hand-crafted features and offering faster, more reliable classification by modeling botanist behavior.
Contribution
The paper presents a novel multistage deep learning method that models botanist behavior for leaf identification, combining scratch-designed and transfer-learned models for improved accuracy and efficiency.
Findings
Achieves 99.67% and 99.81% accuracy on Flavia and MalayaKew datasets.
Outperforms traditional feature-based and deep learning methods in accuracy.
Offers a faster, distributable model with fewer parameters.
Abstract
Modern scientific and technological advances allow botanists to use computer vision-based approaches for plant identification tasks. These approaches have their own challenges. Leaf classification is a computer-vision task performed for the automated identification of plant species, a serious challenge due to variations in leaf morphology, including its size, texture, shape, and venation. Researchers have recently become more inclined toward deep learning-based methods rather than conventional feature-based methods due to the popularity and successful implementation of deep learning methods in image analysis, object recognition, and speech recognition. In this paper, to have an interpretable and reliable system, a botanist's behavior is modeled in leaf identification by proposing a highly-efficient method of maximum behavioral resemblance developed through three deep learning-based…
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Taxonomy
MethodsDepthwise Convolution · Pointwise Convolution · Depthwise Separable Convolution · 1x1 Convolution · Average Pooling · Batch Normalization · Inverted Residual Block · Convolution · Tether Customer Service Number +1-833-534-1729
