Jumio Inc., 1971 Landings Drive, Mountain View, CA 94043, USA.
IEEE Trans Pattern Anal Mach Intell. 2012 Oct;34(10):1952-65. doi: 10.1109/TPAMI.2011.267.
Existing state-of-the-art minimal path techniques work well to extract simple open curves in images when both endpoints of the curve are given as user input or when one input is given and the total length of the curve is known in advance. Curves which branch require even further prior input from the user, namely, each branch endpoint. In this work, we present a novel minimal path-based algorithm which works on much more general curve topologies with far fewer demands on the user for initial input compared to prior minimal path-based algorithms. The two key novelties and benefits of this new approach are that 1) it may be used to detect both open and closed curves, including more complex topologies containing both multiple branch points and multiple closed cycles without requiring a priori knowledge about which of these types is to be extracted, and 2) it requires only a single input point which, in contrast to existing methods, is no longer constrained to be an endpoint of the desired curve but may in fact be ANY point along the desired curve (even an internal point). We perform quantitative evaluation of the algorithm on 48 images (44 pavement crack images, 1 catheter tube image, and 3 retinal images) against human supplied ground truth. The results demonstrate that the algorithm is indeed able to extract curve-like objects accurately from images with far less prior knowledge and less user interaction compared to existing state-of-the-art minimal path-based image processing algorithms. In the future, the algorithm can be applied to other 2D curve-like objects and it can be extended to detect 3D curves.
现有的最先进的最小路径技术在提取图像中简单的开放曲线时效果很好,当曲线的两个端点都作为用户输入给出时,或者当输入一个点并且预先知道曲线的总长度时。分支曲线需要用户进一步输入,即每个分支端点。在这项工作中,我们提出了一种新的基于最小路径的算法,与基于最小路径的先前算法相比,该算法适用于更通用的曲线拓扑结构,对用户的初始输入要求要少得多。这种新方法的两个关键创新点和优势是:1)它可用于检测开放和封闭曲线,包括具有多个分支点和多个封闭周期的更复杂拓扑结构,而无需事先了解要提取的曲线类型;2)它只需要一个输入点,与现有方法相比,该输入点不再局限于所需曲线的端点,而实际上可以是所需曲线(甚至内部点)上的任何点。我们在 48 张图像(44 张路面裂缝图像、1 张导管管图像和 3 张视网膜图像)上对该算法进行了定量评估,并与人工提供的真实数据进行了对比。结果表明,与现有的基于最小路径的图像处理算法相比,该算法确实能够在更少的先验知识和更少的用户交互的情况下,从图像中准确地提取出类似曲线的物体。将来,该算法可以应用于其他 2D 曲线物体,并且可以扩展到检测 3D 曲线。