ACTIVE MEAN FIELDS FOR PROBABILISTIC IMAGE SEGMENTATION: CONNECTIONS WITH CHAN-VESE AND RUDIN-OSHER-FATEMI MODELS.

IF 2.1 3区 数学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE SIAM Journal on Imaging Sciences Pub Date : 2017-01-01 Epub Date: 2017-07-27 DOI:10.1137/16M1058601
Marc Niethammer, Kilian M Pohl, Firdaus Janoos, William M Wells
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引用次数: 3

Abstract

Segmentation is a fundamental task for extracting semantically meaningful regions from an image. The goal of segmentation algorithms is to accurately assign object labels to each image location. However, image-noise, shortcomings of algorithms, and image ambiguities cause uncertainty in label assignment. Estimating the uncertainty in label assignment is important in multiple application domains, such as segmenting tumors from medical images for radiation treatment planning. One way to estimate these uncertainties is through the computation of posteriors of Bayesian models, which is computationally prohibitive for many practical applications. On the other hand, most computationally efficient methods fail to estimate label uncertainty. We therefore propose in this paper the Active Mean Fields (AMF) approach, a technique based on Bayesian modeling that uses a mean-field approximation to efficiently compute a segmentation and its corresponding uncertainty. Based on a variational formulation, the resulting convex model combines any label-likelihood measure with a prior on the length of the segmentation boundary. A specific implementation of that model is the Chan-Vese segmentation model (CV), in which the binary segmentation task is defined by a Gaussian likelihood and a prior regularizing the length of the segmentation boundary. Furthermore, the Euler-Lagrange equations derived from the AMF model are equivalent to those of the popular Rudin-Osher-Fatemi (ROF) model for image denoising. Solutions to the AMF model can thus be implemented by directly utilizing highly-efficient ROF solvers on log-likelihood ratio fields. We qualitatively assess the approach on synthetic data as well as on real natural and medical images. For a quantitative evaluation, we apply our approach to the icgbench dataset.

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概率图像分割的主动平均场:与chanvese和rudin-osher-fatemi模型的联系。
分割是从图像中提取语义有意义区域的基本任务。分割算法的目标是准确地为每个图像位置分配对象标签。然而,图像噪声、算法的缺点和图像的模糊性导致了标签分配的不确定性。标签分配的不确定性估计在许多应用领域都很重要,例如从医学图像中分割肿瘤以进行放射治疗计划。估计这些不确定性的一种方法是通过计算贝叶斯模型的后验,这对于许多实际应用来说在计算上是禁止的。另一方面,大多数计算效率高的方法无法估计标签不确定性。因此,我们在本文中提出了主动平均场(AMF)方法,这是一种基于贝叶斯建模的技术,它使用平均场近似来有效地计算分割及其相应的不确定性。基于变分公式,得到的凸模型将任何标记似然度量与分割边界长度的先验相结合。该模型的具体实现是Chan-Vese分割模型(CV),其中二值分割任务由高斯似然和对分割边界长度的先验正则化来定义。此外,由AMF模型导出的欧拉-拉格朗日方程与常用的Rudin-Osher-Fatemi (ROF)图像去噪模型等效。因此,AMF模型的解决方案可以通过直接利用对数似然比域上的高效ROF求解器来实现。我们对合成数据以及真实的自然和医学图像进行定性评估。为了进行定量评估,我们将我们的方法应用于icgbench数据集。
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来源期刊
SIAM Journal on Imaging Sciences
SIAM Journal on Imaging Sciences COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
3.80
自引率
4.80%
发文量
58
审稿时长
>12 weeks
期刊介绍: SIAM Journal on Imaging Sciences (SIIMS) covers all areas of imaging sciences, broadly interpreted. It includes image formation, image processing, image analysis, image interpretation and understanding, imaging-related machine learning, and inverse problems in imaging; leading to applications to diverse areas in science, medicine, engineering, and other fields. The journal’s scope is meant to be broad enough to include areas now organized under the terms image processing, image analysis, computer graphics, computer vision, visual machine learning, and visualization. Formal approaches, at the level of mathematics and/or computations, as well as state-of-the-art practical results, are expected from manuscripts published in SIIMS. SIIMS is mathematically and computationally based, and offers a unique forum to highlight the commonality of methodology, models, and algorithms among diverse application areas of imaging sciences. SIIMS provides a broad authoritative source for fundamental results in imaging sciences, with a unique combination of mathematics and applications. SIIMS covers a broad range of areas, including but not limited to image formation, image processing, image analysis, computer graphics, computer vision, visualization, image understanding, pattern analysis, machine intelligence, remote sensing, geoscience, signal processing, medical and biomedical imaging, and seismic imaging. The fundamental mathematical theories addressing imaging problems covered by SIIMS include, but are not limited to, harmonic analysis, partial differential equations, differential geometry, numerical analysis, information theory, learning, optimization, statistics, and probability. Research papers that innovate both in the fundamentals and in the applications are especially welcome. SIIMS focuses on conceptually new ideas, methods, and fundamentals as applied to all aspects of imaging sciences.
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