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Pattern recognition and image processing of infrared astronomical satellite images.

机译:红外天文卫星图像的模式识别和图像处理。

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The Infrared Astronomical Satellite (IRAS) images with wavelengths of 60 {dollar}mu m{dollar} and 100 {dollar}mu m{dollar} contain mainly information on both extra-galactic sources and low-temperature interstellar media. The low-temperature interstellar media in the Milky Way impose a "cirrus" screen of IRAS images, especially in images with 100 {dollar}mu m{dollar} wavelength. This dissertation deals with the techniques of removing the "cirrus" clouds from the 100 {dollar}mu m{dollar} band in order to achieve accurate determinations of point sources and their intensities (fluxes). We employ an image filtering process which utilizes mathematical morphology and wavelet analysis as the key tools in removing the "cirrus" foreground emission. The filtering process consists of extraction and classification of the size information, and then using the classification results in removal of the cirrus component from each pixel of the image. Extraction of size information is the most important step in this process. It is achieved by either mathematical morphology or wavelet analysis. In the mathematical morphological method, extraction of size information is done using the "sieving" process. In the wavelet method, multi-resolution techniques are employed instead.; The classification of size information distinguishes extra-galactic sources from cirrus using their averaged size information. The cirrus component for each pixel is then removed by using the averaged cirrus size information. The filtered image contains much less cirrus. Intensity alteration for extra-galactic sources in the filtered image are discussed. It is possible to retain the fluxes of the point sources when we weigh the cirrus component differently pixel by pixel. The importance of the uni-directional size information extractions are addressed in this dissertation. Such uni-directional extractions are achieved by constraining the structuring elements, or by constraining the sieving process to be sequential.; The generalizations of mathematical morphology operations based on the dynamic hit-or-miss transform are presented in this dissertation. The generalized erosion ({dollar}gamma{dollar}-erosion) bridges traditional erosion and dilation. It also enriches the morphological operators available in the field of signal and image processing. Traditional closing is generalized into {dollar}gamma{dollar}-closing, which bridges traditional closing and opening. Properties of {dollar}gamma{dollar}-erosion and {dollar}gamma{dollar}-closing are discussed. The sieving process is generalized based on {dollar}gamma{dollar}-closing, and is bi-directional, with the polarity directly related to the parameter {dollar}gamma{dollar}. The size information extractors of morphological methods and wavelet methods are justified quantitatively using a prototype peak with fixed slope. The non-linearity of the sieving process is analyzed. It is shown that the sieving process can approach an approximate linearity at positions where the input signal has sharp peaks (i.e., the slopes are large). The spatial discriminating properties of the size information extractors are also very important.
机译:红外天文学卫星(IRAS)图像的波长分别为60 {μm}美元和100 {μm}美元,主要包含有关银河外源和低温星际介质的信息。银河系中的低温星际介质会形成IRAS图像的“卷云”屏幕,特别是在波长为100 {μm}μm{dollar}的图像中。本文研究了从100μm{dollar}波段中去除“卷云”的技术,以便准确确定点源及其强度(通量)。我们采用了一种图像过滤过程,该过程利用数学形态学和小波分析作为消除“卷云”前景发射的关键工具。过滤过程包括尺寸信息的提取和分类,然后使用分类结果从图像的每个像素中去除卷云分量。尺寸信息的提取是此过程中最重要的步骤。它可以通过数学形态学或小波分析来实现。在数学形态学方法中,使用“筛分”过程完成尺寸信息的提取。在小波方法中,改为使用多分辨率技术。大小信息的分类使用平均大小信息将银河外源与卷云区分开。然后,通过使用平均的卷云大小信息来删除每个像素的卷云分量。过滤后的图像包含更少的卷云。讨论了滤波图像中银河外源的强度变化。当我们逐个像素地加权卷云分量时,可以保留点源的通量。本文讨论了单向尺寸信息提取的重要性。这样的单向提取是通过约束结构元素或通过将筛分过程约束为顺序的来实现的。本文对基于动态命中或未命中变换的数学形态学运算进行了概括。广义侵蚀({伽马} {侵蚀})弥合了传统的侵蚀和扩张。它还丰富了信号和图像处理领域中可用的形态运算符。传统的结账被概括为{dollar} gamma {dollar} -closing,它弥合了传统的结账和开放。讨论了美元γ侵蚀和美元闭合的性质。筛分过程基于{gamma {gamma {dollar}-闭合而被概括,并且是双向的,其极性与参数{gdollargamma {dollar}直接相关。使用固定斜率的原型峰对形态学方法和小波方法的大小信息提取器进行定量验证。对筛分过程的非线性进行了分析。结果表明,在输入信号具有尖峰(即,斜率大)的位置处,筛分过程可以接近近似线性。尺寸信息提取器的空间区分特性也非常重要。

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