Local estimation of parametric point spread functions in thermal images via convolutional neural networks

Florian Piras, Edouard De Moura Presa, P. Wellig, M. Liebling
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Abstract

Thermal image formation can be modeled as the convolution of an ideal image with a point spread function (PSF) that characterizes the optical degradations. Although simple space-invariant models are sufficient to model diffraction-limited optical systems, they cannot capture local variations that arise because of nonuniform blur. Such degradations are common when the depth of field is limited or when the scene involves motion. Although space-variant deconvolution methods exist, they often require knowledge of the local PSF. In this paper, we adapt a local PSF estimation method (based on a learning approach and initially designed for visible light microscopy) to thermal images. The architecture of our model uses a ResNet-34 convolutional neural network (CNN) that we trained on a large thermal image dataset (CVC-14) that we split in training, tuning, and evaluation subsets. We annotated the sets by synthetically blurring sharp patches in the images with PSFs whose parameters covered a range of values, thereby producing pairs of sharp and blurred images, which could be used for supervised training and ground truth evaluation. We observe that our method is efficient at recovering PSFs when their width is larger than the size of a pixel. The estimation accuracy depends on the careful selection of training images that contain a wide range of spatial frequencies. In conclusion, while local PSF parameter estimation via a trained CNN can be efficient and versatile, it requires selecting a large and varied training dataset. Local deconvolution methods for thermal images could benefit from our proposed PSF estimation method.
基于卷积神经网络的热图像参数点扩展函数的局部估计
热图像的形成可以建模为理想图像与表征光学退化的点扩展函数(PSF)的卷积。虽然简单的空间不变模型足以模拟衍射受限的光学系统,但它们无法捕捉由于不均匀模糊而产生的局部变化。当景深有限或场景涉及运动时,这种退化是常见的。虽然存在空间变反褶积方法,但它们通常需要了解局部PSF。在本文中,我们将局部PSF估计方法(基于学习方法,最初为可见光显微镜设计)应用于热图像。我们的模型架构使用ResNet-34卷积神经网络(CNN),我们在一个大型热图像数据集(CVC-14)上进行训练,我们将其分为训练、调优和评估子集。我们通过使用参数覆盖一定范围的psf对图像中的锐块进行综合模糊来标注集合,从而生成锐块和模糊块的图像对,这些图像可用于监督训练和ground truth评估。我们观察到,当psf的宽度大于一个像素的大小时,我们的方法可以有效地恢复psf。估计的准确性取决于对包含广泛空间频率范围的训练图像的仔细选择。综上所述,虽然通过训练好的CNN进行局部PSF参数估计是高效和通用的,但它需要选择一个大而多样的训练数据集。本文提出的PSF估计方法可用于热图像的局部反褶积方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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34
审稿时长
9 weeks
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