研究目的
To develop an automated methodology for detecting and counting olive trees in satellite images to address the infeasibility of manual data collection and improve crop yield estimation.
研究成果
The proposed algorithm achieves a high detection accuracy of 96% with low computational cost (24 ms per image), demonstrating effectiveness in automated olive tree counting. Future work will focus on incorporating more features and color spectrum for improved accuracy and specificity.
研究不足
The methodology may falsely detect non-olive components with circular morphology and omit closely planted trees. It does not incorporate specific features of olive trees, making it applicable to other trees as well. The use of only RGB bands limits spectral information, and the dataset, while diverse, may not cover all possible scenarios.
1:Experimental Design and Method Selection:
The methodology involves a multi-step algorithm using image processing techniques, including pre-processing with unsharp masking, segmentation via improved multi-level Otsu's thresholding, and detection using circular Hough transform.
2:Sample Selection and Data Sources:
Images were acquired from the SIGPAC viewer of the Ministry of Environment and Rural and Marine Affairs Spain, specifically from the Castilla La Mancha region, with a spatial resolution of 1 meter in RGB bands. The dataset consists of 95 images of size 300x300 pixels, covering diverse ground classes.
3:List of Experimental Equipment and Materials:
Satellite imagery from SIGPAC viewer, computational tools for image processing (e.g., CPU implementation for algorithms).
4:Experimental Procedures and Operational Workflow:
Steps include converting images to grayscale, applying unsharp masking with a 3x3 mean filter and k=
5:7, performing multi-level thresholding with Otsu's method for segmentation, detecting circular blobs using circular Hough transform, and counting trees. Data Analysis Methods:
Performance metrics such as overall accuracy, omission error rate, and estimation error were calculated. Segmentation accuracy was assessed using Jaccard Index, and computational time was measured.
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