Título: An Automatic Ship Detection Method Based on Local Gray-Level Gathering Characteristics in SAR Imagery
Autores: Wang, Xiaolong
Chen, Cuixia
Fecha: 2013-02-28
Publicador: Elcvia: electronics letters on computer vision and image analysis
Fuente:
Tipo:
Tema: Object Description and Recognition;Image Analysis and Processing;Remote Sensing
Image Analysis and Processing
Descripción: This paper proposes an automatic ship detection method based on gray-level gathering characteristics of synthetic aperture radar (SAR) imagery. The method does not require any prior knowledge about ships and background observation. It uses a novel local gray-level gathering degree (LGGD) to characterize the spatial intensity distribution of SAR image, and then an adaptive-like LGGD thresholding and filtering scheme to detect ship targets. Experiments on real SAR images with varying sea clutter backgrounds and multiple target situations have been conducted. The performance analysis confirms that the proposed method works well in various circumstances with high detection rate, fast detection speed and perfect shape preservation.
Idioma: Inglés

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