首页> 外文会议>Image processing: Algorithms and systems IX >PSO-Based Methods for Medical Image Registration and Change Assessment of Pigmented Skin
【24h】

PSO-Based Methods for Medical Image Registration and Change Assessment of Pigmented Skin

机译:基于PSO的色素性皮肤医学图像配准和变化评估方法

获取原文
获取原文并翻译 | 示例

摘要

There are various scientific and technological areas in which it is imperative to rapidly detect and quantify changes in imagery over time. In fields such as earth remote sensing, aerospace systems, and medical imaging, searching for time-dependent, regional changes across deformable topographies is complicated by varying camera acquisition geometries, lighting environments, background clutter conditions, and occlusion. Under these constantly-fluctuating conditions, the use of standard, rigid-body registration approaches often fail to provide sufficient fidelity to overlay image scenes together. This is problematic because incorrect assessments of the underlying changes of high-level topography can result in systematic errors in the quantification and classification of interested areas. For example, in the current naked-eye detection strategies of melanoma, a dermatologist often uses static morphological attributes to identify suspicious skin lesions for biopsy. This approach does not incorporate temporal changes which suggest malignant degeneration. By performing the co-registration of time-separated skin imagery, a dermatologist may more effectively detect and identify early morphological changes in pigmented lesions; enabling the physician to detect cancers at an earlier stage resulting in decreased morbidity and mortality. This paper describes an image processing system which will be used to detect changes in the characteristics of skin lesions over time. The proposed system consists of three main functional elements: 1.) coarse alignment of time-sequenced imagery, 2.) refined alignment of local skin topographies, and 3.) assessment of local changes in lesion size. During the coarse alignment process, various approaches can be used to obtain a rough alignment, including: 1.) a manual landmark/intensity-based registration method1, and 2.) several flavors of autonomous optical matched filter methods2. These procedures result in the rough alignment of a patient's back topography. Since the skin is a deformable membrane, this process only provides an initial condition for subsequent refinements in aligning the localized topography of the skin. To achieve a refined enhancement, a Particle Swarm Optimizer (PSO) is used to optimally determine the local camera models associated with a generalized geometric transform. Here the optimization process is driven using the minimization of entropy between the multiple time-separated images. Once the camera models are corrected for local skin deformations, the images are compared using both pixel-based and regional-based methods. Limits on the detectability of change are established by the fidelity to which the algorithm corrects for local skin deformation and background alterations. These limits provide essential information in establishing early-warning thresholds for Melanoma detection. Key to this work is the development of a PSO alignment algorithm to perform the refined alignment in local skin topography between the time sequenced imagery (TSI). Test and validation of this alignment process is achieved using a forward model producing known geometric artifacts in the images and afterwards using a PSO algorithm to demonstrate the ability to identify and correct for these artifacts. Specifically, the forward model introduces local translational, rotational, and magnification changes within the image. These geometric modifiers are expected during TSI acquisition because of logistical issues to precisely align the patient to the image recording geometry and is therefore of paramount importance to any viable image registration system. This paper shows that the PSO alignment algorithm is effective in autonomously determining and mitigating these geometric modifiers. The degree of efficacy is measured by several statistically and morphologically based pre-image filtering operations applied to the TSI imagery before applying the PSO alignment algorithm. These trade studies show that global image threshold binarization provides rapid and superior convergence characteristics relative to that of morphologically based methods.
机译:在各个科学技术领域,必须迅速检测和量化图像随时间的变化。在地球遥感,航空航天系统和医学成像等领域,通过改变摄像机采集的几何形状,照明环境,背景杂波条件和遮挡,在可变形地形中寻找时间相关的区域变化变得非常复杂。在这些不断变化的条件下,使用标准的刚体配准方法通常无法提供足够的保真度来将图像场景叠加在一起。这是有问题的,因为对高级地形的基础变化的不正确评估会导致对感兴趣区域进行量化和分类时出现系统性错误。例如,在当前的黑素瘤裸眼检测策略中,皮肤科医生通常使用静态形态学属性来识别可疑皮肤病变以进行活检。该方法未纳入提示恶性变性的时间变化。通过对时间分离的皮肤图像进行共配准,皮肤科医生可以更有效地检测和识别色素沉着病变的早期形态学变化。使医生能够及早发现癌症,从而降低发病率和死亡率。本文介绍了一种图像处理系统,该系统将用于检测皮肤损伤特征随时间的变化。拟议的系统由三个主要功能元素组成:1.)按时间顺序排列的图像的粗略对齐; 2.)局部皮肤形貌的精细对齐;以及3.)病变部位局部变化的评估。在粗对准过程中,可以使用各种方法来获得粗对准,包括:1.)手动基于地标/强度的配准方法1,和2.)多种口味的自主光学匹配滤光器方法2。这些过程导致患者背部轮廓的粗略对准。由于皮肤是可变形的膜,因此该过程仅提供初始条件,用于后续的精修,以对齐皮肤的局部形貌。为了实现改进的增强效果,使用了粒子群优化器(PSO)来最佳地确定与广义几何变换关联的本地相机模型。在此,使用多个时间分隔图像之间的熵最小来驱动优化过程。一旦针对局部皮肤变形校正了相机模型,就可以使用基于像素的方法和基于区域的方法对图像进行比较。该算法可针对局部皮肤变形和背景变化进行校正的保真度来确定变化的可检测性极限。这些限制为建立黑色素瘤检测的预警阈值提供了重要信息。这项工作的关键是开发一种PSO对齐算法,以便在时间序列图像(TSI)之间在局部皮肤地形图中执行精确的对齐。使用正向模型在图像中产生已知的几何伪像,然后使用PSO算法证明对这些伪像进行识别和校正的能力,可以实现对对准过程的测试和验证。具体来说,前向模型会在图像内引入局部平移,旋转和放大倍数变化。由于后勤问题,TSI采集期间需要这些几何修改器,以使患者精确对准图像记录的几何形状,因此,对于任何可行的图像配准系统而言,这都是至关重要的。本文表明,PSO对齐算法可以有效地自主确定和缓解这些几何修改器。在应用PSO对齐算法之前,可通过对TSI图像应用几种基于统计学和形态学的图像前过滤操作来测量功效的程度。这些行业研究表明,与基于形态学的方法相比,全局图像阈值二值化提供了快速且卓越的收敛特性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号