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首页> 外文期刊>IEEE Transactions on Medical Imaging >Regularization for uniform spatial resolution properties in penalized-likelihood image reconstruction
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Regularization for uniform spatial resolution properties in penalized-likelihood image reconstruction

机译:惩罚似然图像重建中统一空间分辨率特性的正则化

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摘要

Traditional space-invariant regularization methods in tomographic image reconstruction using penalized-likelihood estimators produce images with nonuniform spatial resolution properties. The local point spread functions that quantify the smoothing properties of such estimators are space variant, asymmetric, and object-dependent even for space invariant imaging systems. The authors propose a new quadratic regularization scheme for tomographic imaging systems that yields increased spatial uniformity and is motivated by the least-squares fitting of a parameterized local impulse response to a desired global response. The authors have developed computationally efficient methods for PET systems with shift-invariant geometric responses. They demonstrate the increased spatial uniformity of this new method versus conventional quadratic regularization schemes in simulated PET thorax scans.
机译:在传统的空间不变正则化方法中,使用惩罚似然估计器进行断层图像重建时,会产生具有不均匀空间分辨率特性的图像。即使对于空间不变的成像系统,量化这种估计器的平滑特性的局部扩展函数也是空间变异的,不对称的并且依赖于对象的。作者为层析成像系统提出了一种新的二次正则化方案,该方案可提高空间均匀性,并受到参数化局部脉冲响应与所需全局响应的最小二乘拟合的影响。作者已经开发了具有位移不变几何响应的PET系统的高效计算方法。他们证明了这种新方法在模拟PET胸部扫描中与传统的二次正则化方案相比具有更高的空间均匀性。

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