Zheng Yefeng, Georgescu Bogdan, Comaniciu Dorin
Integrated Data Systems Department, Siemens Corporate Research, USA.
Inf Process Med Imaging. 2009;21:411-22. doi: 10.1007/978-3-642-02498-6_34.
Recently, marginal space learning (MSL) was proposed as a generic approach for automatic detection of 3D anatomical structures in many medical imaging modalities [1]. To accurately localize a 3D object, we need to estimate nine pose parameters (three for position, three for orientation, and three for anisotropic scaling). Instead of exhaustively searching the original nine-dimensional pose parameter space, only low-dimensional marginal spaces are searched in MSL to improve the detection speed. In this paper, we apply MSL to 2D object detection and perform a thorough comparison between MSL and the alternative full space learning (FSL) approach. Experiments on left ventricle detection in 2D MRI images show MSL outperforms FSL in both speed and accuracy. In addition, we propose two novel techniques, constrained MSL and nonrigid MSL, to further improve the efficiency and accuracy. In many real applications, a strong correlation may exist among pose parameters in the same marginal spaces. For example, a large object may have large scaling values along all directions. Constrained MSL exploits this correlation for further speed-up. The original MSL only estimates the rigid transformation of an object in the image, therefore cannot accurately localize a nonrigid object under a large deformation. The proposed nonrigid MSL directly estimates the nonrigid deformation parameters to improve the localization accuracy. The comparison experiments on liver detection in 226 abdominal CT volumes demonstrate the effectiveness of the proposed methods. Our system takes less than a second to accurately detect the liver in a volume.
最近,边缘空间学习(MSL)被提出作为一种在多种医学成像模态中自动检测3D解剖结构的通用方法[1]。为了准确地定位一个3D物体,我们需要估计九个姿态参数(三个用于位置,三个用于方向,三个用于各向异性缩放)。在MSL中,不是详尽地搜索原始的九维姿态参数空间,而是仅搜索低维边缘空间以提高检测速度。在本文中,我们将MSL应用于2D物体检测,并对MSL和替代的全空间学习(FSL)方法进行了全面比较。在2D MRI图像中检测左心室的实验表明,MSL在速度和准确性方面均优于FSL。此外,我们提出了两种新技术,即约束MSL和非刚性MSL,以进一步提高效率和准确性。在许多实际应用中,同一边缘空间中的姿态参数之间可能存在很强的相关性。例如,一个大物体可能在所有方向上都具有较大的缩放值。约束MSL利用这种相关性来进一步加速。原始的MSL仅估计图像中物体的刚性变换,因此在大变形下无法准确地定位非刚性物体。所提出的非刚性MSL直接估计非刚性变形参数以提高定位精度。在226个腹部CT容积中检测肝脏的比较实验证明了所提方法的有效性。我们的系统在不到一秒的时间内就能准确地检测出容积中的肝脏。