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A novel compression algorithm for infrared thermal image sequence based on K-means method

机译:基于K-means方法的红外热像序列压缩算法

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High resolution in space and time is becoming the new trend of thermographic inspection of equipments, therefore, the development of a fast and precise processing and data store technique of high resolution thermal image should be well studied. This article will propose a novel global compression algorithm, which will provide an effective way to improve the precision and processing speed of thermal image data. This new algorithm is based on the decay of the temperature of thermograph and the feature of thermal image morphology. Firstly, it will sort the data in space according to K-means method. Then it will employ classic fitting calculation to fit all the typical temperature decay curves. At last, it will use the fitting parameters of the curves as the parameters for compression and reconstruction of thermal image sequence to achieve the method for which the thermal image sequence can be compressed in space and time simultaneously. To validate the proposed new algorithm, the authors used two embedded defective specimens made of different materials to do the experiment. The results show that the proposed infrared thermal image sequence compression processing algorithm is an effective solution with high speed and high precision. Compared to the conventional method, the global compression algorithm is not only noise resistant but also can improve the computing speed in hundreds of times.
机译:时空上的高分辨率正成为设备热像仪检查的新趋势,因此,对高分辨率热像的快速,精确处理和数据存储技术的发展应进行深入研究。本文将提出一种新颖的全局压缩算法,它将为提高热图像数据的精度和处理速度提供一种有效的方法。该新算法基于热成像图温度的衰减和热图像形态的特征。首先,它将根据K-means方法对空间中的数据进行排序。然后,它将使用经典拟合计算来拟合所有典型的温度衰减曲线。最后,将曲线的拟合参数作为热像序列的压缩和重构参数,以实现热像序列可以同时在空间和时间上进行压缩的方法。为了验证所提出的新算法,作者使用了两个由不同材料制成的嵌入式缺陷标本进行实验。结果表明,所提出的红外热图像序列压缩处理算法是一种高效,高精度的解决方案。与传统方法相比,全局压缩算法不仅抗噪,而且可以将计算速度提高数百倍。

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