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Himanshu Kulshreshtha
Himanshu KulshreshthaElite Author
Asked: March 9, 20242024-03-09T06:54:20+05:30 2024-03-09T06:54:20+05:30In: PGCGI

What is image classification? Explain the methods and steps of supervised image classification.

What is the classification of images? Describe the procedures and techniques used in supervised image categorization.

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    1. Himanshu Kulshreshtha Elite Author
      2024-03-09T06:54:38+05:30Added an answer on March 9, 2024 at 6:54 am

      Image classification is a process in remote sensing and computer vision that involves categorizing pixels or regions within an image into predefined classes or land cover types. The goal is to assign each pixel in an image to a specific category based on its spectral characteristics. Supervised image classification relies on training samples with known class labels to teach a computer algorithm to identify and classify pixels in the image.

      Methods of Supervised Image Classification:

      1. Maximum Likelihood Classification:

        • This method assumes that pixel values for each class in the feature space follow a normal distribution. Maximum Likelihood Classification assigns a pixel to the class that has the highest probability of producing the observed pixel value. It is widely used for its simplicity and effectiveness.
      2. Support Vector Machines (SVM):

        • SVM is a machine learning algorithm that works by finding the optimal hyperplane to separate different classes in the feature space. SVM has proven effective in image classification, especially in situations where classes are not linearly separable. It can handle both binary and multiclass classification problems.
      3. Random Forest:

        • Random Forest is an ensemble learning method that combines the predictions of multiple decision trees. In image classification, Random Forest can handle complex relationships and interactions between spectral bands, making it robust and suitable for high-dimensional datasets.
      4. Neural Networks (Deep Learning):

        • Deep learning methods, particularly Convolutional Neural Networks (CNNs), have gained popularity in image classification tasks. CNNs automatically learn hierarchical features from the data, allowing them to capture intricate patterns and relationships. Deep learning methods often outperform traditional approaches when large labeled datasets are available.

      Steps of Supervised Image Classification:

      1. Data Collection:

        • Acquire satellite or aerial imagery covering the area of interest. The choice of sensors and spectral bands depends on the application and desired level of detail. Collect ground truth data, which are samples of known land cover types within the image.
      2. Data Preprocessing:

        • Preprocess the imagery to enhance its quality and prepare it for classification. This includes radiometric correction, geometric correction, and atmospheric correction. Additionally, remove any artifacts or anomalies in the image that may affect classification accuracy.
      3. Training Sample Selection:

        • Identify representative training samples for each land cover class within the image. These samples should be spectrally homogeneous and cover the full range of variability within each class. The training samples serve as input for the classification algorithm to learn the spectral characteristics of each class.
      4. Feature Extraction:

        • Extract relevant spectral and spatial features from the training samples. The choice of features depends on the classification algorithm used. Commonly used features include mean, standard deviation, and texture measures calculated from the spectral bands.
      5. Training the Classifier:

        • Utilize the training samples and extracted features to train the classification algorithm. This involves feeding the algorithm with labeled training data and allowing it to learn the relationships between spectral features and land cover classes.
      6. Image Classification:

        • Apply the trained classifier to the entire image to classify each pixel or region. The classifier uses the learned relationships to assign class labels based on the spectral characteristics of the pixels. The result is a classified image with different color or grayscale values representing different land cover classes.
      7. Accuracy Assessment:

        • Evaluate the accuracy of the classification by comparing the classified image with independent validation data or ground truth. Common accuracy assessment metrics include overall accuracy, user's accuracy, producer's accuracy, and the kappa coefficient.
      8. Post-Classification Processing:

        • Refine the classified image through post-classification processing, which may include filtering, smoothing, or merging adjacent classes. This step helps improve the visual interpretation and accuracy of the final classified map.

      Supervised image classification is a powerful tool for extracting valuable information from remotely sensed imagery. It is widely used in applications such as land cover mapping, agricultural monitoring, environmental assessment, and urban planning. The effectiveness of the classification process depends on careful data preparation, feature extraction, and the selection of an appropriate classification algorithm.

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