Litcius/Paper detail

Thermal Infrared-Image-Enhancement Algorithm Based on Multi-Scale Guided Filtering

Huaizhou Li, Shuaijun Wang, Sen Li, Hong Wang, Shupei Wen, Fengyu Li

2024Fire13 citationsDOIOpen Access PDF

Abstract

Obtaining thermal infrared images with prominent details, high contrast, and minimal background noise has always been a focal point of infrared technology research. To address issues such as the blurriness of details and low contrast in thermal infrared images, an enhancement algorithm for thermal infrared images based on multi-scale guided filtering is proposed. This algorithm fully leverages the excellent edge-preserving characteristics of guided filtering and the multi-scale nature of the edge details in thermal infrared images. It uses multi-scale guided filtering to decompose each thermal infrared image into multiple scales of detail layers and a base layer. Then, CLAHE is employed to compress the grayscale and enhance the contrast of the base layer image. Then, detail-enhancement processing of the multi-scale detail layers is performed. Finally, the base layer and the multi-scale detail layers are linearly fused to obtain an enhanced thermal infrared image. Our experimental results indicate that, compared to other methods, the proposed method can effectively enhance image contrast and enrich image details, and has higher image quality and stronger scene adaptability.

Topics & Concepts

InfraredGrayscaleArtificial intelligenceContrast (vision)Scale (ratio)Computer visionComputer scienceEnhanced Data Rates for GSM EvolutionThermalImage (mathematics)Image processingMaterials scienceOpticsPhysicsMeteorologyQuantum mechanicsImage Enhancement TechniquesAdvanced Image Fusion TechniquesAdvanced Image Processing Techniques