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Main Authors: Wu, Hui, Yang, Jia-Jie, Li, Chao-Qun, Ran, Jin-Hua, Peng, Ren-Hua, Wang, Xiao-Quan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.10795
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author Wu, Hui
Yang, Jia-Jie
Li, Chao-Qun
Ran, Jin-Hua
Peng, Ren-Hua
Wang, Xiao-Quan
author_facet Wu, Hui
Yang, Jia-Jie
Li, Chao-Qun
Ran, Jin-Hua
Peng, Ren-Hua
Wang, Xiao-Quan
contents Elliptic Fourier analysis (EFA) is a powerful tool for shape analysis, which is often employed in geometric morphometrics. However, the normalization of elliptic Fourier descriptors has persistently posed challenges in obtaining unique results in basic contour transformations, requiring extensive manual alignment. Additionally, contemporary contour/outline extraction methods often struggle to handle complex digital images. Here, we reformulated the procedure of EFDs calculation to improve computational efficiency and introduced a novel approach for EFD normalization, termed true EFD normalization, which remains invariant under all basic contour transformations. These improvements are crucial for processing large sets of contour curves collected from different platforms with varying transformations. Based on these improvements, we developed ElliShape, a user-friendly software. Particularly, the improved contour/outline extraction employs an interactive approach that combines automatic contour generation for efficiency with manual correction for essential modifications and refinements. We evaluated ElliShape's stability, robustness, and ease of use by comparing it with existing software using standard datasets. ElliShape consistently produced reliable reconstructed shapes and normalized EFD values across different contours and transformations, and it demonstrated superior performance in visualization and efficient processing of various digital images for contour analysis.The output annotated images and EFDs could be utilized in deep learning-based data training, thereby advancing artificial intelligence in botany and offering innovative solutions for critical challenges in biodiversity conservation, species classification, ecosystem function assessment, and related critical issues.
format Preprint
id arxiv_https___arxiv_org_abs_2412_10795
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Reliable and superior elliptic Fourier descriptor normalization and its application software ElliShape with efficient image processing
Wu, Hui
Yang, Jia-Jie
Li, Chao-Qun
Ran, Jin-Hua
Peng, Ren-Hua
Wang, Xiao-Quan
Computer Vision and Pattern Recognition
Quantitative Methods
Elliptic Fourier analysis (EFA) is a powerful tool for shape analysis, which is often employed in geometric morphometrics. However, the normalization of elliptic Fourier descriptors has persistently posed challenges in obtaining unique results in basic contour transformations, requiring extensive manual alignment. Additionally, contemporary contour/outline extraction methods often struggle to handle complex digital images. Here, we reformulated the procedure of EFDs calculation to improve computational efficiency and introduced a novel approach for EFD normalization, termed true EFD normalization, which remains invariant under all basic contour transformations. These improvements are crucial for processing large sets of contour curves collected from different platforms with varying transformations. Based on these improvements, we developed ElliShape, a user-friendly software. Particularly, the improved contour/outline extraction employs an interactive approach that combines automatic contour generation for efficiency with manual correction for essential modifications and refinements. We evaluated ElliShape's stability, robustness, and ease of use by comparing it with existing software using standard datasets. ElliShape consistently produced reliable reconstructed shapes and normalized EFD values across different contours and transformations, and it demonstrated superior performance in visualization and efficient processing of various digital images for contour analysis.The output annotated images and EFDs could be utilized in deep learning-based data training, thereby advancing artificial intelligence in botany and offering innovative solutions for critical challenges in biodiversity conservation, species classification, ecosystem function assessment, and related critical issues.
title Reliable and superior elliptic Fourier descriptor normalization and its application software ElliShape with efficient image processing
topic Computer Vision and Pattern Recognition
Quantitative Methods
url https://arxiv.org/abs/2412.10795