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Himanshu Kulshreshtha
Himanshu KulshreshthaElite Author
Asked: March 9, 20242024-03-09T13:02:18+05:30 2024-03-09T13:02:18+05:30In: PGCGI

Define Image classification.

Define Image classification.

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    1. Himanshu Kulshreshtha Elite Author
      2024-03-09T13:02:44+05:30Added an answer on March 9, 2024 at 1:02 pm

      Image classification is a fundamental task in remote sensing and computer vision that involves categorizing pixels or regions within an image into predefined classes or categories based on their spectral, spatial, and contextual characteristics. The primary goal of image classification is to assign each pixel in an image to a specific land cover class or object category, facilitating the extraction of valuable information for various applications. Here are key aspects of image classification:

      1. Pixel-Level Categorization:

        • Image classification operates at the pixel level, assigning a specific land cover or object class to each individual pixel in an image. Each pixel is characterized by its spectral signature, which represents the radiometric values across different wavelengths.
      2. Supervised and Unsupervised Classification:

        • Image classification can be conducted using either supervised or unsupervised methods. In supervised classification, the algorithm is trained using a set of labeled training samples, where each pixel is associated with a known class. Unsupervised classification involves grouping pixels based on inherent patterns in the data without prior class information.
      3. Training Data:

        • Supervised classification relies on a training dataset containing representative samples of each class. These samples serve as a reference for the algorithm to learn the spectral patterns associated with different land cover types. Training data are crucial for accurate and meaningful classification results.
      4. Spectral Signatures:

        • Spectral signatures, representing the reflectance values of an object across different wavelengths, are fundamental for distinguishing between different land cover classes. Each class exhibits a unique spectral signature, allowing classifiers to differentiate between, for example, vegetation, water bodies, and urban areas.
      5. Feature Extraction:

        • In addition to spectral information, image classification often incorporates spatial and contextual features. Texture, shape, and contextual relationships between neighboring pixels contribute to improving classification accuracy and handling complex landscapes.
      6. Classes and Land Cover Mapping:

        • Image classification results in the generation of thematic maps, where different colors or symbols represent different land cover classes. These maps provide valuable information for land use planning, environmental monitoring, agriculture, forestry, and urban planning.
      7. Accuracy Assessment:

        • To ensure the reliability of classification results, accuracy assessment is performed by comparing the classified image with ground truth data. This process involves validating the correctness of assigned classes and quantifying the overall accuracy and error rates of the classification.
      8. Applications:

        • Image classification finds applications in diverse fields, including agriculture, forestry, environmental monitoring, urban planning, and disaster management. It plays a crucial role in extracting information from satellite or aerial imagery for informed decision-making and resource management.

      In summary, image classification is a vital technique that transforms raw satellite or aerial imagery into actionable information by categorizing pixels into meaningful land cover classes. The process leverages machine learning algorithms, spectral information, and spatial features to automate the identification and mapping of land cover patterns and changes over time.

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