研究目的
Investigating the development of a defect recognition algorithm for visual laser-induced damage detection.
研究成果
The proposed algorithm achieves a 98.8% damage detection efficiency, significantly outperforming conventional methods. It offers a flexible approach to tailoring sensitivity versus reliability for specific applications, with potential for real-time monitoring of optical elements in operating laser systems.
研究不足
The method's sensitivity and reliability were tested on a specific dataset, and its performance may vary with different optical elements or damage types. The computational speed, while improved, may still limit application in very high repetition rate systems without further optimization.
1:Experimental Design and Method Selection:
The study introduces a new method for computer-aided recognition of damaged sites based on visual images taken from the sample surface by a CCD camera. The evaluation procedure includes noise reduction and nonlinear image filtering to separate damage-indicating intensity changes from random noise.
2:Sample Selection and Data Sources:
A 1-inch diameter dielectric mirror sample with appropriate coating for the damage inducing laser wavelength and incidence angle was used. Images were taken before and after the incidence of damage-inducing laser pulses.
3:List of Experimental Equipment and Materials:
Ti:Sapphire chirped pulse amplifier system, CCD camera (Prosilica EC1380), objective lens (Optem zoom 70xl), high power LED light source, and a Nomarski differential interference contrast microscope.
4:Experimental Procedures and Operational Workflow:
The sample was irradiated with laser pulses, and images were captured before and after each pulse. The images were then processed using the proposed algorithm to detect damage spots.
5:Data Analysis Methods:
The evaluation algorithm includes steps for noise reduction, image subtraction, selection of 'suspicious' pixels, nonlinear image filtering, and calculation of a Damage Indicating Value (DIV).
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