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A Pixel-Level Method for Multiple Imaging Sensor Data Fusion through Artificial Neural Networks

机译:通过人工神经网络的多成像传感器数据融合的像素级方法

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Multiple image sensor data fusion is the combination of two or more images from different imaging sensors to improve the performance over each individual image sensor. This paper presents a new pixel-level method of data fusion from multiple image sensors for non-destructive inspection. With this method the images from different sensors were processed and classified using artificial neural networks. The classified images were then fused to produce a resultant image that categorized better than any of the individually classified images. This method was applied to identify the corrosive spots on the aircraft panel specimens. In this application, ultrasonic and eddy current image data ran though artificial neural network classifiers to identify the corroded spots on the same aircraft panel specimen as compared with the benchmark X-ray image. The result indicated that the image data fusion consistently enhanced artificial neural network corrosion detection with eddy current and ultrasonic image data individually in overall and in low corrosion pixels, which are 90 percent of all corrosion pixels, with the improvements over the artificial neural network classification rates of the eddy current image by 12.6% and 12.21% in average for low corrosion and overall corrosion classification, respectively, and over the artificial neural network classification rates of the ultrasonic image by 28.88% and 32.18% in average for low corrosion and overall corrosion classification, respectively. This pixel-level method for multiple imaging sensor data fusion is expected to solve problems of non-destructive inspection in various areas.
机译:多个图像传感器数据融合是来自不同成像传感器的两个或更多图像的组合,以提高每个单独图像传感器的性能。本文提出了一种来自多个图像传感器的无损检测数据融合的新像素级方法。用这种方法,来自不同传感器的图像被处理并使用人工神经网络进行分类。然后将分类的图像融合,以产生比任何单独分类的图像更好分类的结果图像。该方法被用于识别飞机面板样品上的腐蚀点。在此应用中,超声和涡流图像数据通过人工神经网络分类器进行识别,以与基准X射线图像相比,识别同一飞机面板样品上的腐蚀斑点。结果表明,图像数据融合通过涡流和超声图像数据分别在整体和低腐蚀像素(占所有腐蚀像素的90%)中持续增强了人工神经网络的腐蚀检测,相对于人工神经网络的分类率有所提高低腐蚀和整体腐蚀分类的涡流图像平均分别降低12.6%和12.21%,而超声图像的人工神经网络分类率低腐蚀和整体腐蚀分类的平均值分别降低28.88%和32.18% , 分别。这种用于多个成像传感器数据融合的像素级方法有望解决各个领域的非破坏性检查问题。

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