Crop and Weed Segmentation and Fractal Dimension Estimation Using Small Training Data in Heterogeneous Data Environmentopen access
- Authors
- Akram, Rehan; Hong, Jin Seong; Kim, Seung Gu; Sultan, Haseeb; Usman, Muhammad; Gondal, Hafiz Ali Hamza; Tariq, Muhammad Hamza; Ullah, Nadeem; Park, Kang Ryoung
- Issue Date
- May-2024
- Publisher
- MDPI
- Keywords
- weed and crop semantic segmentation; deep learning; small training data; heterogeneous data; fractal dimension estimation
- Citation
- Fractal and Fractional, v.8, no.5, pp 1 - 29
- Pages
- 29
- Indexed
- SCIE
SCOPUS
- Journal Title
- Fractal and Fractional
- Volume
- 8
- Number
- 5
- Start Page
- 1
- End Page
- 29
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/22085
- DOI
- 10.3390/fractalfract8050285
- ISSN
- 2504-3110
2504-3110
- Abstract
- The segmentation of crops and weeds from camera-captured images is a demanding research area for advancing agricultural and smart farming systems. Previously, the segmentation of crops and weeds was conducted within a homogeneous data environment where training and testing data were from the same database. However, in the real-world application of advancing agricultural and smart farming systems, it is often the case of a heterogeneous data environment where a system trained with one database should be used for testing with a different database without additional training. This study pioneers the use of heterogeneous data for crop and weed segmentation, addressing the issue of degraded accuracy. Through adjusting the mean and standard deviation, we minimize the variability in pixel value and contrast, enhancing segmentation robustness. Unlike previous methods relying on extensive training data, our approach achieves real-world applicability with just one training sample for deep learning-based semantic segmentation. Moreover, we seamlessly integrated a method for estimating fractal dimensions into our system, incorporating it as an end-to-end task to provide important information on the distributional characteristics of crops and weeds. We evaluated our framework using the BoniRob dataset and the CWFID. When trained with the BoniRob dataset and tested with the CWFID, we obtained a mean intersection of union (mIoU) of 62% and an F1-score of 75.2%. Furthermore, when trained with the CWFID and tested with the BoniRob dataset, we obtained an mIoU of 63.7% and an F1-score of 74.3%. We confirmed that these values are higher than those obtained by state-of-the-art methods.
- Files in This Item
- There are no files associated with this item.
- Appears in
Collections - College of Engineering > Department of Electronics and Electrical Engineering > 1. Journal Articles

Items in ScholarWorks are protected by copyright, with all rights reserved, unless otherwise indicated.