Litcius/Paper detail

Local Convergence Index-Based Infrared Small Target Detection against Complex Scenes

Siying Cao, Jiakun Deng, Junhai Luo, Zhi Li, Junsong Hu, Zhenming Peng

2023Remote Sensing21 citationsDOIOpen Access PDF

Abstract

Infrared small target detection (ISTD) plays a crucial role in precision guidance, anti-missile interception, and military early-warning systems. Existing approaches suffer from high false alarm rates and low detection rates when detecting dim and small targets in complex scenes. A robust scheme for automatically detecting infrared small targets is proposed to address this problem. First, a gradient weighting technique with high sensitivity was used for extracting target candidates. Second, a new collection of features based on local convergence index (LCI) filters with a strong representation of dim or arbitrarily shaped targets was extracted for each candidate. Finally, the collective set of features was inputted to a random undersampling boosting classifier (RUSBoost) to discriminate the real targets from false-alarm candidates. Extensive experiments on public datasets NUDT-SIRST and NUAA-SIRST showed that the proposed method achieved competitive performance with state-of-the-art (SOTA) algorithms. It is also important to note that the average processing time was as low as 0.07 s per frame with low time consumption, which is beneficial for practical applications.

Topics & Concepts

Computer scienceFalse alarmArtificial intelligenceClassifier (UML)WeightingPattern recognition (psychology)MissileComputer visionEngineeringMedicineRadiologyAerospace engineeringInfrared Target Detection MethodologiesAdvanced Measurement and Detection MethodsThermography and Photoacoustic Techniques
Local Convergence Index-Based Infrared Small Target Detection against Complex Scenes | Litcius