Abstract

High spatial resolution (HSR) image segmentation is considered to be a major challenge for object-oriented remote sensing applications that have been extensively studied in the past. In this paper, we propose a fast and efficient framework for multiscale and multifeatured hierarchical image segmentation (MMHS). First, the HSR image pixels were clustered into a small number of superpixels using a simple linear iterative clustering algorithm (SLIC) on modern graphic processing units (GPUs), and then a region adjacency graph (RAG) and nearest neighbors graph (NNG) were constructed based on adjacent superpixels. At the same time, the RAG and NNG successfully integrated spectral information, texture information, and structural information from a small number of superpixels to enhance its expressiveness. Finally, a multiscale hierarchical grouping algorithm was implemented to merge these superpixels using local-mutual best region merging (LMM). We compared the experiments with three state-of-the-art segmentation algorithms, i.e., the watershed transform segmentation (WTS) method, the mean shift (MS) method, the multiresolution segmentation (MRS) method integrated in commercial software, eCognition9, on New York HSR image datasets, and the ISPRS Potsdam dataset. Computationally, our algorithm was dozens of times faster than the others, and it also had the best segmentation effect through visual assessment. The supervised and unsupervised evaluation results further proved the superiority of the MMHS algorithm.

Highlights

  • With the thriving development of high spatial resolution sensors, a set of high-resolution earth observation satellites have been launched, e.g., the IKONOS, QuickBird, OrbView, WorldView-1/2/3, GeoEye, and Pleiades-1/2

  • We propose a multiscale and multifeature hierarchical segmentation method (MMHS) for High spatial resolution (HSR) imagery that integrates the superiorities of superpixels and the hierarchical merging method and avoids the disadvantages of these pixel-based methods

  • Experiment 1 was the initial over-segmentation experiment conducted on the Albany QuickBird HSR image

Read more

Summary

Introduction

With the thriving development of high spatial resolution sensors, a set of high-resolution earth observation satellites have been launched, e.g., the IKONOS, QuickBird, OrbView, WorldView-1/2/3, GeoEye, and Pleiades-1/2. High spatial resolution (HSR) remote sensing images contain abundant spectral and geometric information. HSR image segmentation is essential for such image analysis [3,4,5]. Image segmentation refers to the process of assigning a label to every pixel in an image such that pixels with the same label share certain visual characteristics [6]. Adjacent regions are significantly different with respect to the same characteristics [6]. Various of image segmentation algorithms have been developed according to different requirements and conditions which can be mainly divided into two categories: pixel-based and object-based image segmentation (OBIA) [7]. The most important difference between them is the basic unit used for comparison in the process of image analysis

Objectives
Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call