1. Automatic Detection of Geospatial Objects Using Multiple Hierarchical Segmentations
- Author
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Selim Aksoy and H.G. Akcay
- Subjects
Object detection algorithms ,Image Segmentation, Mathematical Morphology ,Computer science ,Image analysis ,Spectral informations ,Image texture ,Generic algorithms ,Computer vision ,Segmentation ,Spectral banding ,Risk assessment ,Image segmentation ,Mathematical models ,Conditional probability distributions ,Applied (CO) ,Unsupervised Object Detection ,Geo spatial objects ,Remote sensing ,Kullback leibler divergence (KLD) ,Feature (computer vision) ,Feature extraction ,Set theory ,Data sets ,Different scales ,Algorithms ,Probabilistic latent semantic analysis (PLSA) ,Segmentation algorithms ,Information theory ,Object detection ,Automatic labelling ,Comparative experiments ,New algorithm ,Novel methods ,Hierarchical Segmentation ,Feature distribution ,High-resolution (HR) images ,Object classes ,Learning algorithms ,Image processing ,Object-based ,Information retrieval ,Morphological operations ,Boolean functions ,Electrical and Electronic Engineering ,Connected components ,Unsupervised segmentation ,Probability ,Remotely sensed imagery (RSI) ,Pixel ,Probabilistic latent semantic analysis ,Labels ,Segmentation-based object categorization ,business.industry ,Structural informations ,Pattern recognition ,Object recognition ,Individual (PSS 544-7) ,Object-based Analysis ,Structuring element (SE) ,Probability distributions ,Grouping problems ,Object modelling ,Mathematical morphology ,Computer Science::Computer Vision and Pattern Recognition ,Automatic detection ,General Earth and Planetary Sciences ,Artificial intelligence ,business - Abstract
Cataloged from PDF version of article. The object-based analysis of remotely sensed imagery provides valuable spatial and structural information that is complementary to pixel-based spectral information in classi- fication. In this paper, we present novel methods for automatic object detection in high-resolution images by combining spectral information with structural information exploited by using image segmentation. The proposed segmentation algorithm uses morphological operations applied to individual spectral bands using structuring elements in increasing sizes. These operations produce a set of connected components forming a hierarchy of segments for each band. A generic algorithm is designed to select meaningful segments that maximize a measure consisting of spectral homogeneity and neighborhood connectivity. Given the observation that different structures appear more clearly at different scales in different spectral bands, we describe a new algorithm for unsupervised grouping of candidate segments belonging to multiple hierarchical segmentations to find coherent sets of segments that correspond to actual objects. The segments are modeled by using their spectral and textural content, and the grouping problem is solved by using the probabilistic latent semantic analysis algorithm that builds object models by learning the object-conditional probability distributions. The automatic labeling of a segment is done by computing the similarity of its feature distribution to the distribution of the learned object models using the Kullback–Leibler divergence. The performances of the unsupervised segmentation and object detection algorithms are evaluated qualitatively and quantitatively using three different data sets with comparative experiments, and the results show that the proposed methods are able to automatically detect, group, and label segments belonging to the same object classes.
- Published
- 2008
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