用于图像合成的智能剪刀

Eric N. Mortensen, W. Barrett
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引用次数: 907

摘要

我们提出了一种新的交互式工具,称为智能剪刀,用于图像分割和合成。全自动分割是一个未解决的问题,而手工跟踪是不准确的,费力的不可接受的。然而,智能剪刀允许使用简单的鼠标手势动作快速准确地提取数字图像中的物体。当鼠标位置接近对象边缘时,带电线边界会“捕捉”到感兴趣的对象,并环绕该对象。活线边界检测将离散动态规划(DP)表述为一个二维图搜索问题。DP提供了数学上最优的边界,同时大大降低了对局部噪声或其他干预结构的敏感性。鲁棒性通过实时训练进一步增强,这使得边界坚持当前所遵循的特定类型的边缘,而不仅仅是附近最强的边缘。边界冷却自动冻结不变的部分,并自动输入额外的种子点。冷却还允许用户更自由地使用手势路径,从而提高提取边界的效率和技巧。提取的对象可以缩放、旋转,并使用带电线遮罩和空间频率等效进行合成。频率等效是通过应用巴特沃斯滤波器来实现的,该滤波器将最低频谱与所有其他图像分量相匹配。智能剪刀允许从现有图像中创建令人信服的构图,同时显着提高了物体提取的速度和精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent scissors for image composition
We present a new, interactive tool called Intelligent Scissors which we use for image segmentation and composition. Fully automated segmentation is an unsolved problem, while manual tracing is inaccurate and laboriously unacceptable. However, Intelligent Scissors allow objects within digital images to be extracted quickly and accurately using simple gesture motions with a mouse. When the gestured mouse position comes in proximity to an object edge, a live-wire boundary “snaps” to, and wraps around the object of interest. Live-wire boundary detection formulates discrete dynamic programming (DP) as a two-dimensional graph searching problem. DP provides mathematically optimal boundaries while greatly reducing sensitivity to local noise or other intervening structures. Robustness is further enhanced with on-the-fly training which causes the boundary to adhere to the specific type of edge currently being followed, rather than simply the strongest edge in the neighborhood. Boundary cooling automatically freezes unchanging segments and automates input of additional seed points. Cooling also allows the user to be much more free with the gesture path, thereby increasing the efficiency and finesse with which boundaries can be extracted. Extracted objects can be scaled, rotated, and composited using live-wire masks and spatial frequency equivalencing. Frequency equivalencing is performed by applying a Butterworth filter which matches the lowest frequency spectra to all other image components. Intelligent Scissors allow creation of convincing compositions from existing images while dramatically increasing the speed and precision with which objects can be extracted.
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