Litcius/Paper detail

A Double-Neighborhood Gradient Method for Infrared Small Target Detection

Lang Wu, Yong Ma, Fan Fan, Minghui Wu, Jun Huang

2020IEEE Geoscience and Remote Sensing Letters103 citationsDOI

Abstract

Effective and efficient infrared (IR) small target detection is essential for IR search and tracking (IRST) systems. The current methods have some limitations in background suppression or detection of targets close to each other. In this letter, a double-neighborhood gradient method (DNGM) is proposed. First, a new technology of the tri-layer sliding window is designed to measure the double-neighborhood gradient. Then, the DNGM is obtained by multiplying the double-neighborhood gradient. In this way, even the sizes of the targets may vary, ranging from 2 ×1 to 9 ×9 pixels, the target can be better highlighted under a fixed scale, and background interference can be suppressed. Finally, the target is segmented from the DNGM salience map by an adaptive threshold. Experiments illustrate that the proposed method can avoid the “expansion effect” of the traditional multiscale human vision system (HVS) method and can accurately detect multiple targets close to each other. Besides, the proposed method is more robust and real-time than the existing methods.

Topics & Concepts

Computer scienceRemote sensingArtificial intelligenceGeologyInfrared Target Detection MethodologiesAdvanced Image Fusion TechniquesAdvanced Measurement and Detection Methods