Abstract

Detecting buildings from high-resolution satellite imagery is beneficial in mapping, environmental preparation, disaster management, military planning, urban planning and research purposes. Differentiating buildings from the images is possible however, it may be a time-consuming or complicated process. Therefore, the high-resolution imagery from satellites needs to be automated to detect the buildings. Additionally, buildings exhibit several different characteristics, and their appearance in these images is unplanned. Moreover, buildings in the metropolitan environment are typically crowded and complicated. Therefore, it is challenging to identify the building and hard to locate them. To resolve this situation, a novel probabilistic method has been suggested using local features and probabilistic approaches. A local feature extraction technique was implemented, which was used to calculate the probability density function. The locations in the image were represented as joint probability distributions and were used to estimate their probability distribution function (pdf). The density of building locations in the image was extracted. Kernel density distribution was also used to find the density flow for different metropolitan cities such as Sydney (Australia), Tokyo (Japan), and Mumbai (India), which is useful for distribution intensity and pattern of facility point f interest (POI). The purpose system can detect buildings/rooftops and to test our system, we choose some crops with panchromatic high-resolution satellite images from Australia and our results looks promising with high efficiency and minimal computational time for feature extraction. We were able to detect buildings with shadows and building without shadows in 0.4468 (seconds) and 0.5126 (seconds) respectively.

Highlights

  • Remote sensing imagery has been used for a long time for building detection for various applications such as urban planning, estimation of population, mapping out building and or marketing perspectives

  • The operational methods developed over the years for building detection are semi-automated requiring the need of skilled personnel

  • The system was tested on various satellite image sets and the building detection output is presented in the result section

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Summary

A Gabor Filter-Based Protocol for Automated Image-Based

Hafiz Suliman Munawar 1 , Riya Aggarwal 2 , Zakria Qadir 3, * , Sara Imran Khan 4 , Abbas Z.

Introduction
Data Collection
Study Area and Training UAV Datasets
Classification of Datasets
Local Feature Extraction
Parameter Control Points
Gabor Local Feature Point Extraction
Building Detection
Density Flow
Computational Time
Findings
Conclusions

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