Abstract

Building detection in satellite images has been considered an essential field of research in remote sensing and computer vision. There are currently numerous techniques and algorithms used to achieve building detection performance. Different algorithms have been proposed to extract building objects from high-resolution satellite images with standard contrast. However, building detection from low-contrast satellite images to predict symmetrical findings as of past studies using normal contrast images is considered a challenging task and may play an integral role in a wide range of applications. Having received significant attention in recent years, this manuscript proposes a methodology to detect buildings from low-contrast satellite images. In an effort to enhance visualization of satellite images, in this study, first, the contrast of an image is optimized to represent all the information using singular value decomposition (SVD) based on the discrete wavelet transform (DWT). Second, a line-segment detection scheme is applied to accurately detect building line segments. Third, the detected line segments are hierarchically grouped to recognize the relationship of identified line segments, and the complete contours of the building are attained to obtain candidate rectangular buildings. In this paper, the results from the method above are compared with existing approaches based on high-resolution images with reasonable contrast. The proposed method achieves high performance thus yields more diversified and insightful results over conventional techniques.

Highlights

  • The current era of technological competition among humans and organizations is marked by the desire to get a lead in capturing the most up-to-date knowledge

  • The rate of detection correctness (RoD), the false negative rate (FNR), precision, recall, f -score and overall accuracy were derived from the following quantities: number objects correctly classified as buildings (NTP ), number of other objects classified as buildings (NFP ), and a number of buildings classified as another object (NFN ), which were based on the quantities given in Equations (8)–(13)

  • Based on existing literature insights, the main theoretical contributions of this paper are: (1) This study compares the rate of detection from the perspective of true building objects from already existing low-contrast satellite images; (2) This study analyzes the change of rate in time efficiency of detecting building objects from low-contrast satellite imagery; (3) this study presents its insights regarding the overall accuracy of detecting building objects

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Summary

Introduction

The current era of technological competition among humans and organizations is marked by the desire to get a lead in capturing the most up-to-date knowledge. The modernized aspects of working with digital knowledge capturing, processing, and utilization have created fundamental ease of use for practitioners such as GIS analysts, space analysts, engineering personnel, medical specialists, and many more. Many organizations have opted to work with the micro aspects of technology, which have augmented the conciseness and efficiency of their work. Technological advancements which have led to organizational efficiency have opened new horizons for academics and practitioners to further elucidate the specificity of technological practicality in different fields. Extending the discussion of technology adoption, some authors believe that new technological aspects that have played an important role in people’s lives include the processing of information they receive during every

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