Change Detection in Remote Sensing Image Data Comparing Algebraic and Machine Learning Methods

Remote sensing technology has penetrated all the natural resource segments as it provides precise information in an image mode. Remote sensing satellites are currently the fastest-growing source of geographic area information. With the continuous change in the earth’s surface and the wide applicatio...

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Bibliographic Details
Main Authors: Anjali Goswami, Deepak Sharma, Harani Mathuku, Syam Machinathu Parambil Gangadharan, Chandra Shekhar Yadav, Saroj Kumar Sahu, Manoj Kumar Pradhan, Jagendra Singh, Hazra Imran
Format: Article
Language:English
Published: MDPI AG 2022-01-01
Series:Electronics
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Online Access:https://www.mdpi.com/2079-9292/11/3/431
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Summary:Remote sensing technology has penetrated all the natural resource segments as it provides precise information in an image mode. Remote sensing satellites are currently the fastest-growing source of geographic area information. With the continuous change in the earth’s surface and the wide application of remote sensing, change detection is very useful for monitoring environmental and human needs. So, it is necessary to develop automatic change detection techniques to improve the quality and reduce the time required by manual image analysis. This work focuses on the improvement of the classification accuracy of the machine learning techniques by reviewing the training samples and comparing the post-classification comparison with the image differencing in the algebraic technique. Landsat data are medium spatial resolution data; that is why pixel-wise computation has been applied. Two change detection techniques have been studied by applying a decision tree algorithm using a separability matrix and image differencing. The first change detection, e.g., the separability matrix, is a post-classification comparison in which individual images are classified by a decision tree algorithm. The second change detection is, e.g., the image differencing change detection technique in which changed and unchanged pixels are determined by applying the corner method to calculate the threshold on the changing image. The performance of the machine learning algorithm has been validated by 10-fold cross-validation. The experimental results show that the change detection using the post-classification method produced better results when compared to the image differencing of the algebraic change detection technique.
ISSN:2079-9292