Abstract

A new morphological attribute building index (MABI) and shadow index (MASI) are proposed here for automatically extracting building features from very high-resolution (VHR) remote sensing satellite images. By investigating the associated attributes in morphological attribute filters (AFs), the proposed method establishes a relationship between AFs and the characteristics of buildings/shadows in VHR images (e.g., high local contrast, internal homogeneity, shape, and size). In the pre-processing step of the proposed work, attribute filtering was conducted on the original VHR spectral reflectance data to obtain the input, which has a high homogeneity, and to suppress elongated objects (potential non-buildings). Then, the MABI and MASI were calculated by taking the obtained input as a base image. The dark buildings were considered separately in the MABI to reduce the omission of the dark roofs. To better detect buildings from the MABI feature image, an object-oriented analysis and building-shadow concurrence relationships were utilized to further filter out non-building land covers, such as roads and bare ground, that are confused for buildings. Three VHR datasets from two satellite sensors, i.e., Worldview-2 and QuickBird, were tested to determine the detection performance. In view of both the visual inspection and quantitative assessment, the results of the proposed work are superior to recent automatic building index and supervised binary classification approach results.

Highlights

  • Buildings are one of the most important types of artificial targets in the urban environment

  • The reduction in commission errors (CEs) and omission errors (OEs) values proves the effectiveness of the morphological attribute shadow index (MASI). The comparison of these results shows that the most accurate combination is the proposed work

  • An analysis of the existing morphological building index (MBI) showed that the building feature extraction algorithm based on morphological operators is subject to some OEs and CEs

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Summary

Introduction

Buildings are one of the most important types of artificial targets in the urban environment. The improvement in the building feature extraction accuracy is attributed to the increase in the homogeneity of image I; in addition, both statistical tables and images show that the MABI obtained a more accurate result than the MBI under identical conditions. For both the bright image and I, the proposed MABI achieves more accurate results than the MBI, and the most appropriate combination is the proposed one

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