Deepsoilnet: A CNN-Based Framework With Gabor And LBP Feature Fusion For Automated Soil Texture Classification From Field Images

Authors

  • Praveen Kumar Khandappa Author
  • Manjula Sunkadakatte Haladappa Author

DOI:

https://doi.org/10.64252/94kx3873

Keywords:

Convolutional Neural Network, Gabor Filter, Image Processing, Local Binary pattern, Classification of soil texture, Texture enhancement

Abstract

Soil texture plays a pivotal role in determining water retention, nutrient availability, and overall soil health, making its classification essential for precision agriculture and land management. This study introduces a novel deep learning-based framework for automating soil texture classification using image processing techniques combined with Convolutional Neural
 (LBP) for multi-scale texture extraction, followed by CNN-based classification. Soil images are first segmented to isolate relevant regions, then divided into tiles for detailed feature extraction. Comparative analysis shows that Gabor filters outperform LBP
in texture enhancement, leading to improved classification performance. The model was trained and validated on a dataset comprising soil samples from varied conditions and achieved 99% accuracy with a low loss of 0.0134, demonstrating its robustness. This hybrid approach significantly advances the automation of soil analysis and presents a scalable solution for agricultural and environmental applications

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Published

2025-07-02

Issue

Section

Articles

How to Cite

Deepsoilnet: A CNN-Based Framework With Gabor And LBP Feature Fusion For Automated Soil Texture Classification From Field Images. (2025). International Journal of Environmental Sciences, 1608-1616. https://doi.org/10.64252/94kx3873