Abstracto

SAR Image Segmentation Based On Hierarchical Merging Method

Karthick.C, Saraswathy.C

Image segmentation is an important tool in satellite image processing and serves as an efficient front end to sophisticated algorithm and thereby simplify subsequent processing. It used to extract the meaningful objects lying in the image. The aim of the paper is to obtain the segmentation of the Synthetic Aperture Radar (SAR) image with minimum run time of the algorithm. The algorithm used for the segmentation is named as hierarchical unequal merging algorithm. In this paper instead of pixel, the superpixels are used as operation units. The preprocessing stage consist of formation of superpixel. The analysis of superpixel is performed by using three Gestalt law. In this edge detection, feature extraction are computed from the superpixel content. Based on this the merging of superpixel take place in two phase namely 1) Coarse merging stage 2) Fine merging stage. It will use less running time for the superpixels which are not present in the boundaries of different pattern and more running time in the superpixels which are in doubtful regions. The proposed algorithm is effectively reduces the process of segmentation and computational complexity.

Descargo de responsabilidad: este resumen se tradujo utilizando herramientas de inteligencia artificial y aún no ha sido revisado ni verificado.

Indexado en

Academic Keys
ResearchBible
CiteFactor
Cosmos SI
Búsqueda de referencia
Universidad Hamdard
Catálogo mundial de revistas científicas
director académico
Factor de impacto de revistas innovadoras internacionales (IIJIF)
Instituto Internacional de Investigación Organizada (I2OR)
Cosmos

Ver más