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Feature Based Image Registration for Functional MR images using prior shape information

机译:基于功能的图像注册,用于使用先前形状信息的功能MR图像

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Motion can have a significant impact on signal changes in functional MR images, and affects the detection of task activation. To minimize the effects of motion on the fMRI signal, we propose a feature based image registration model. Due to T_2~* weighted signal loss, decreased resolution and low contrast in fMR images, the feature to be used for realignment can't be detected reliably by any edge detector that uses only the image gradient, like the popular model of geometric active contours. Our approach uses a prior given shape to find the feature in a low-resolution image. In addition to this, we can find an affine alignment of the segmented feature with the given shape.Given a time series of images, we use this method to find transformations to realign the images. In this model, we minimize an energy functional that depends on the image gradient and the given shape, so that the boundary of the object captured occurs at high gradients and is as close as possible to the given shape. This model has been tested both on synthetic data and fMR brain image data. The. experimental results show the effectiveness of this model in feature determination and time series image registration.
机译:运动可能对功能MR图像中的信号变化产生显着影响,并影响任务激活的检测。为了最小化运动对FMRI信号的影响,我们提出了一种基于特征的图像登记模型。由于T_2〜*加权信号丢失,降低了FMR图像中的分辨率和低对比度,无法通过仅使用图像梯度的任何边缘检测器可靠地检测要用于重新验证的功能,例如几何活动轮廓的流行模型。 。我们的方法使用先前给定的形状来在低分辨率图像中找到该特征。除此之外,我们还可以使用给定的形状找到分段功能的仿射对齐。一系列图像的图像,我们使用此方法来查找重新安静的变换。在该模型中,我们最小化取决于图像梯度和给定形状的能量功能,使得捕获的物体的边界发生在高梯度上并且尽可能接近给定的形状。该模型已经在合成数据和FMR脑图像数据上进行了测试。这。实验结果表明该模型在特征确定和时间序列图像配准中的有效性。

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