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A User-Friendly Machine Learning Pipeline for Automated Leaf Segmentation in Atriplex lentiformis
by
Yung, Michelle Lynn
, Merchant, Nirav
, Murawska-Wlodarczyk, Kamila
, Babst-Kostecka, Alicja
, Maier, Raina Margaret
, Ooi, Aikseng
in
Applications programs
/ Artificial neural networks
/ Atriplex lentiformis
/ Automation
/ Datasets
/ Decoding
/ Deep learning
/ Image processing
/ Image segmentation
/ Leaves
/ Machine learning
/ Neural networks
/ Plant growth
/ Segmentation
/ Short Communication
/ Transfer learning
/ Usability
2025
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A User-Friendly Machine Learning Pipeline for Automated Leaf Segmentation in Atriplex lentiformis
by
Yung, Michelle Lynn
, Merchant, Nirav
, Murawska-Wlodarczyk, Kamila
, Babst-Kostecka, Alicja
, Maier, Raina Margaret
, Ooi, Aikseng
in
Applications programs
/ Artificial neural networks
/ Atriplex lentiformis
/ Automation
/ Datasets
/ Decoding
/ Deep learning
/ Image processing
/ Image segmentation
/ Leaves
/ Machine learning
/ Neural networks
/ Plant growth
/ Segmentation
/ Short Communication
/ Transfer learning
/ Usability
2025
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Do you wish to request the book?
A User-Friendly Machine Learning Pipeline for Automated Leaf Segmentation in Atriplex lentiformis
by
Yung, Michelle Lynn
, Merchant, Nirav
, Murawska-Wlodarczyk, Kamila
, Babst-Kostecka, Alicja
, Maier, Raina Margaret
, Ooi, Aikseng
in
Applications programs
/ Artificial neural networks
/ Atriplex lentiformis
/ Automation
/ Datasets
/ Decoding
/ Deep learning
/ Image processing
/ Image segmentation
/ Leaves
/ Machine learning
/ Neural networks
/ Plant growth
/ Segmentation
/ Short Communication
/ Transfer learning
/ Usability
2025
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A User-Friendly Machine Learning Pipeline for Automated Leaf Segmentation in Atriplex lentiformis
Journal Article
A User-Friendly Machine Learning Pipeline for Automated Leaf Segmentation in Atriplex lentiformis
2025
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Overview
Automated leaf segmentation pipelines must balance accuracy, scalability, and usability to be readily adopted in plant research. We present an end-to-end deep learning pipeline designed for practical use in plant phenotyping, which we developed and evaluated during a real-world plant growth experiment using Atriplex lentiformis. The pipeline integrates a fine-tuned Mask Region-based Convolutional Neural Network (Mask R-CNN) segmentation model trained on 176 plant images and achieves high performance despite the small training data set (Dice coefficient = 0.781). We quantitatively compare the fine-tuned Mask R-CNN model to Meta AI’s Segment Anything Model (SAM) and evaluate natural language prompts using Grounded SAM and the Leaf-Only SAM post-processing pipeline for refining segmentation outputs. Our findings highlight that transfer learning on a specialized data set can still outperform a large foundation model in domain-specific tasks. In addition, we integrate QR codes for automated sample identification and benchmark multiple QR code decoding libraries, evaluating their robustness under real-world imaging conditions like distortion and lighting variation. To ensure accessibility, we deploy the pipeline as a user-friendly Streamlit web application, allowing researchers to analyze images without deep learning expertise. By focusing on practical deployment in addition to model performance, this study provides an open-source, scalable framework for plant science applications and addresses real-world challenges in automation and usability by the end-researcher.
Publisher
SAGE Publications,Sage Publications Ltd
Subject
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