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Blind Deconvolution Estimation by an Exponentials Library

机译:指数库的盲反卷积估计

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The deconvolution process allows to extract the impulse response of a sample by collecting the input/output response. In the blind deconvolution estimation (BDE), this process is implemented without the input signal information. In particular, this work is focused on fluorescence lifetime imaging microscopy (FLIM) datasets, where the fluorescence impulse responses are extracted by assuming an exponential library model and a common instrument response (input signal) to all the measurements. Due to the nonlinear interaction of the free variables, an alternated least-squares methodology is adopted, which is based on constrained quadratic optimizations. The new BDE algorithm is validated with synthetic FLIM datasets by comparing the standard deconvolution methodology with an exponential library under different model orders, and types and levels of noise, which shows the applicability and robustness of the proposal.
机译:去卷积处理允许通过收集输入/输出响应来提取样本的脉冲响应。在盲反卷积估计(BDE)中,无需输入信号信息即可执行此过程。特别地,这项工作集中于荧光寿命成像显微镜(FLIM)数据集,其中通过假设指数库模型和对所有测量的通用仪器响应(输入信号)来提取荧光脉冲响应。由于自由变量的非线性相互作用,因此采用了基于约束二次优化的交替最小二乘法。通过将标准反卷积方法与指数库在不同的模型阶次,噪声的类型和水平下进行比较,使用合成的FLIM数据集对新的BDE算法进行了验证,这表明了该建议的适用性和鲁棒性。

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