基于cnn密集块的旋转伽玛校正增强土壤图像分类

Q3 Economics, Econometrics and Finance Applied Computer Science Pub Date : 2023-09-30 DOI:10.35784/acs-2023-27
Sri INDRA MAIYANTI, Anita DESIANI, Syafrina LAMIN, P PUSPITAHATI, Muhammad ARHAMI, Nuni GOFAR, Destika CAHYANA
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引用次数: 0

摘要

土壤是覆盖在地球表面的固体颗粒。土壤可以根据颜色来分类。颜色可以作为土壤性质和土壤条件的指示。土壤图像分类需要较高的准确性和谨慎性。CNN在图像分类上做得很好,但是CNN需要大量的数据。增强是一种克服旋转和提高对比度等数据需求的技术。旋转是将图像位置随机旋转不同程度的运动。伽玛校正是一种通过降低或增加对比度来改善图像的方法。增强上的旋转和伽玛校正可以使训练数据量从156个增加到2500个。土壤数据的分类并没有参考土壤分类系统(Entisols和Histosols),而是采用了基于颜色的任意简单分类。不幸的是,CNN的弱点是消失和爆炸梯度。另一个可以克服消失和爆炸梯度的深度学习是密集块。本研究提出了一种增强与CNN-Dense块的结合,在增强中使用旋转和伽玛校正技术的结合,CNN-Dense块使用基于颜色的土壤图像分类。该组合方法的准确率、精密度、召回率和F1-Score均在90%以上。结合增强和CNN的旋转和伽玛校正是一种鲁棒的基于颜色的土壤图像分类方法。
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ROTATION-GAMMA CORRECTION AUGMENTATION ON CNN-DENSE BLOCK FOR SOIL IMAGE CLASSIFICATION
Soil is a solid-particle that covers the earth's surface. Soils can be classified based their color. The color can be an indication of soil properties and soil conditions. Soil image classification requires high accuracy and caution. CNN works well on image classification, but CNN requires a large amount of data. Augmentation is one technique to overcome data needs like rotation and improving contrast. Rotation is the movement of rotating the image position randomly to various degrees. Gamma Correction is a method to improve image by decreasing or increasing the contrast. The rotation and Gamma Correction on augmentation can increase the amount of training data from 156 to 2500 soil images data. The classification of soil data is not referred to soil taxonomy system such as Entisols and Histosols but it used arbitrary simple classification based on color. Unfortunately, the weakness of the CNN is vanishing and exploded gradients. Another Deep learning that can overcome vanishing and exploded gradients is dense blocks. This study proposes a combination of Augmentation and CNN-Dense block where in the augmentation a combination of rotation and Gamma-correction techniques is used and Soil image classification based on color is used by the CNN-Dense block. The combination method is able to give excellent results, where all performances accuracy, precisions, recall and F1-Score are above 90%. The combination of rotation and Gamma Correction on augmentation and CNN is a robust method to use in soil image classification based on color.
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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