Abstract

Quality segment generation is a well-known challenge and research objective within Geographic Object-based Image Analysis (GEOBIA). Although methodological avenues within GEOBIA are diverse, segmentation commonly plays a central role in most approaches, influencing and being influenced by surrounding processes. A general approach using supervised quality measures, specifically user provided reference segments, suggest casting the parameters of a given segmentation algorithm as a multidimensional search problem. In such a sample supervised segment generation approach, spatial metrics observing the user provided reference segments may drive the search process. The search is commonly performed by metaheuristics. A novel sample supervised segment generation approach is presented in this work, where the spectral content of provided reference segments is queried. A one-class classification process using spectral information from inside the provided reference segments is used to generate a probability image, which in turn is employed to direct a hybridization of the original input imagery. Segmentation is performed on such a hybrid image. These processes are adjustable, interdependent and form a part of the search problem. Results are presented detailing the performances of four method variants compared to the generic sample supervised segment generation approach, under various conditions in terms of resultant segment quality, required computing time and search process characteristics. Multiple metrics, metaheuristics and segmentation algorithms are tested with this approach. Using the spectral data contained within user provided reference segments to tailor the output generally improves the results in the investigated problem contexts, but at the expense of additional required computing time.

Highlights

  • Sensed satellite imagery has unique characteristics and derived information products compared to imagery encountered in many other image analysis disciplines

  • Incorporating a segmentation algorithm, which is central in many Geographic Object-Based Image Analysis (GEOBIA) approaches, either for semantic object segmentation and description [8], or for only allowing for the generation of richer attributes for classification, have been shown to be efficient in many real world applications [2]

  • Various general approaches have been proposed to address the challenge of thematically accurate image segmentation and classification, including advocating rule-set or expert system’s approaches within GEOBIA [1,14], the development of new domain specific segmentation algorithms [18], multi-scale image analysis [6,19,20], using context information or spatial relationships among segments [14,21,22], and hybridizing or interleaving classification and segmentation processes [23,24,25]

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Summary

Introduction

Sensed satellite imagery has unique characteristics and derived information products compared to imagery encountered in many other image analysis disciplines. Various general approaches have been proposed to address the challenge of thematically accurate image segmentation and classification (semantic segmentation), including advocating rule-set or expert system’s approaches within GEOBIA [1,14], the development of new domain specific segmentation algorithms [18], multi-scale image analysis [6,19,20], using context information or spatial relationships among segments [14,21,22], and hybridizing or interleaving classification and segmentation processes [23,24,25]. The proposed method is compared with the generic formulation of sample supervised segment generation and results are demonstrated via the task of accurately segmenting structures in towns, villages and refugee camps on VHR optical remote sensing data This contribution falls within the context of enlarged search spaces first presented in [29], but proposes a methodology that uses spectral content contained within reference segments as opposed to adding data transformation or mapping functions.

Background and Related Work
Classifier Directed Data Hybridization
Method Overview
Search Landscape
Metrics and Optimizers
Experimental Design
Segment Quality Comparison and Method Ranking
Search Process Characteristics
Parameter Interdependencies
Metaheuristic Viability
Conclusions
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