Abstract

Segmentation of buildings in urban areas, especially dense urban areas, by using remotely sensed images is highly desirable. However, segmentation results obtained by using existing algorithms are unsatisfactory because of the unclear boundaries between buildings and the shadows cast by neighboring buildings. In this paper, an algorithm is proposed that successfully segments buildings from aerial photographs, including shadowed buildings in dense urban areas. To handle roofs having rough textures, digital numbers (DNs) are quantized into several quantum values. Quantization using several interval widths is applied during segmentation, and for each quantization, areas with homogeneous values are labeled in an image. Edges determined from the homogeneous areas obtained at each quantization are then merged, and frequently observed edges are extracted. By using a “rectangular index”, regions whose shapes are close to being rectangular are thus selected as buildings. Experimental results show that the proposed algorithm generates more practical segmentation results than an existing algorithm does. Therefore, the main factors in successful segmentation of shadowed roofs are (1) combination of different quantization results, (2) selection of buildings according to the rectangular index, and (3) edge completion by the inclusion of non-edge pixels that have a high probability of being edges. By utilizing these factors, the proposed algorithm optimizes the spatial filtering scale with respect to the size of building roofs in a locality. The proposed algorithm is considered to be useful for conducting building segmentation for various purposes.

Highlights

  • Three-dimensional (3D) modeling of buildings in urban areas has recently gained widespread popularity and has been studied by many researchers

  • This paper focuses on an algorithm to segment buildings from aerial photographs of dense urban areas

  • Quantization using several digital numbers (DNs) interval widths is applied during the segmentation algorithm, and for each quantization, areas with homogeneous quantum values are labeled in an image

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Summary

Introduction

Three-dimensional (3D) modeling of buildings in urban areas has recently gained widespread popularity and has been studied by many researchers. Japanese houses often have undulating slate roofs with a rough texture, and the standard deviation of their digital number (DN) is large This rough texture causes a third problem, which is that many erroneous edges are detected during segmentation preprocessing. Owing to these features, segmentation results were poor for the area in Figure 1 using an existing algorithm. An algorithm is proposed that segments buildings, including shadowed buildings, in dense urban areas from aerial photographs. The algorithm and the experimental results are discussed in detail in Section 4, and Section 5 concludes the paper

Study Area
Segmentation Algorithm
Results
Effect of Quantization and Edge Completion
Rectangular Index
Optimization of Parameters
Computation Time
Applications
Conclusions

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