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Semi-automatic Labeling of Satellite Images Using Texture Features and Hough Circle Transformation

In order to extract valuable ground information from images, supervised classification is an extensively adopted technique. However, it has a substantial downside in that choosing and labeling training samples requires a lot of time and resources. Fortunately, recent developments in automatic inform...

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Published in:SN computer science 2024-06, Vol.5 (5), p.516, Article 516
Main Authors: Sundari, L. K. Sowmya, Mallikarjuna, M. K., Halakeri, Pooja, Hebbar, Ramachandra
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Mallikarjuna, M. K.
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description In order to extract valuable ground information from images, supervised classification is an extensively adopted technique. However, it has a substantial downside in that choosing and labeling training samples requires a lot of time and resources. Fortunately, recent developments in automatic information indexing have produced encouraging this development makes it possible to develop an automated method for labelling training samples as opposed to relying just on human interpretation. In this research paper, we present a unique technique for the automated recognition and annotation of training data for high-resolution image classification which will identify tree and non-tree. The proposed methodology consists of methods like pre-processing to enhance the quality, identifying features where distinctive characteristics are extracted from the images, applying NDVI a fundamental vegetation index which quantifies the presence of healthy vegetation, applying a 7*7 mask, spatial filter to enhance specific features in the image, image subtraction to highlights discrepancies between images and Hough circle transformation a robust method for circular shape detection to identify circular patterns associated with tree canopies detecting tree region. The proposed sampling methodology has been assessed using a series of high-resolution remote sensing images. The results indicate that the proposed method can reliably generate a large number of samples and can achieve satisfactory results when used with various classifiers. This research makes a significant contribution to high-resolution image classification by automating the labeling of training data, with a particular emphasis on tree identification.
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subjects Accuracy
Advances in Computational Approaches for Image Processing
Algorithms
Annotations
Automation
Circles (geometry)
Classification
Cloud Applications and Network Security
Computer Imaging
Computer Science
Computer Systems Organization and Communication Networks
Crops
Data Structures and Information Theory
Decision making
Deep learning
Efficiency
Environmental monitoring
Food security
High resolution
Image classification
Image enhancement
Image resolution
Information Systems and Communication Service
Labeling
Land use
Methods
Neural networks
Original Research
Pattern Recognition and Graphics
Remote sensing
Sampling methods
Satellite imagery
Software Engineering/Programming and Operating Systems
Spatial filtering
Subtraction
Unmanned aerial vehicles
Urban planning
Vegetation
Vegetation index
Vision
Wireless Networks
title Semi-automatic Labeling of Satellite Images Using Texture Features and Hough Circle Transformation
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