4.6 Article

Dynamic Range Compression of Thermograms for Assessment of Welded Joint Face Quality

期刊

SENSORS
卷 23, 期 4, 页码 -

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MDPI
DOI: 10.3390/s23041995

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welding; TIG; thermography; dynamic range compression; image processing; image analysis

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Temperature is a crucial parameter in fusion welding. Global approaches and multiscale decomposition methods were investigated for dynamic range compression of IR images to enhance visibility of low-contrast details. Methods based on wavelet transforms were found to be the most suitable, although they generated relatively large local noise.
Temperature is one of the essential parameters in fusion welding. Typically, an uncooled infrared detector acquires 14-bit data, while a human observer can only distinguish about 128 levels of grey. For IR HDR (high dynamic range) images, one of the main goals of dynamic range compression is to enhance the visibility of low-contrast details. It is an important issue because the temperature span in the cross-section of a welded joint and its length are large. In the paper, global approaches for range compression are investigated, such as algorithms that include pixel transformations, histogram equalization ('he') and some of its variants. Additionally, multiscale decomposition methods were investigated. All results are obtained for the sequences of thermograms acquired during the TIG welding of plates made of Inconel 625 superalloy. The process was observed with an uncooled IR camera. The application of compression methods led to the generation of low-dynamic-range (LDR) IR images. The algorithms allowed the preservation of global contrast and enhancement of the visibility of hot details in dark and low-contrast areas. All IR representations of the welded samples were evaluated, and relationships between apparent temperature counted in the pixel-level value and weld-face geometry were revealed. Methods based on wavelet transforms were found to be the most suitable for this type of image; nevertheless, a relatively large local noise was generated.

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