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Multilabel land cover aerial image classification using convolutional neural networks

Kareem, Razia Sulthana Abdul and Ramanjineyulu, Anil Gandhudi and Rajan, Regin and Setiawan, Roy and Sharma, Dilip Kumar and Gupta, Mukesh Kumar and Joshi, Hitesh and Kumar, Ankit and Harikrishnan, Haritha and Sengan, Sudhakar (2022) Multilabel land cover aerial image classification using convolutional neural networks. [UNSPECIFIED]

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      Abstract

      Classifying the remote sensing images requires a deeper understanding of remote sensing imagery, machine learning classification algorithms, and a profound insight into satellite images’ know-how properties. In this paper, a convolutional neural network (CNN) is designed to classify the multispectral SAT-4 images into four classes: trees, grassland, barren land, and others. SAT-4 is an airborne dataset that captures the images in 4 bands (R, G, B, infrared). The proposed CNN classifier learns the image’s spectral and spatial properties fromthe ground truth samples provided. The contribution of this paper is three-fold. (1) A classification framework for feature extraction and normalization is built. (2) Nine different architectures of models are built, and multiple experiments are conducted to classify the images. (3) A deeper understanding of the image structure and resolution is captured by varying different optimizers inCNN. The correlation between images of varying classes is identified. The experimental study shows that vegetation health is predicted most accurately by the proposed CNN models. It significantly differentiates the grassland vegetation from tree vegetation, which is better than other classical methods. The tabulated results show that a state-of-the-art analysis is done to learn varying landcover classification models.

      Item Type: UNSPECIFIED
      Uncontrolled Keywords: Image classification, convolutional neural networks, industrial management
      Subjects: H Social Sciences > HD Industries. Land use. Labor > HD28 Management. Industrial Management
      Divisions: Faculty of Economic > Business Management Program
      Depositing User: Admin
      Date Deposited: 23 Nov 2022 22:03
      Last Modified: 27 Dec 2022 17:15
      URI: https://repository.petra.ac.id/id/eprint/19820

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