Convexity prior is one of the main cue for human vision and shape completion with important applications in image processing, computer vision. This paper focuses on characterization methods for convex objects and applications in image processing. We present a new method for convex objects representations using binary functions, that is, the convexity of a region is equivalent to a simple quadratic inequality constraint on its indicator function. Models are proposed firstly by incorporating this result for image segmentation with convexity prior and convex hull computation of a given set with and without noises. Then, these models are summarized to a general optimization problem on binary function(s) with the quadratic inequality. Numerical algorithm is proposed based on linearization technique, where the linearized problem is solved by a proximal alternating direction method of multipliers with guaranteed convergent. Numerical experiments demonstrate the efficiency and effectiveness of the proposed methods for image segmentation and convex hull computation in accuracy and computing time.
翻译:在图像处理、计算机视觉中,隐蔽之前是人类视觉和形状完成的主要提示之一,在图像处理、计算机视觉中,它是重要的应用。本文侧重于对曲线对象和图像处理中的应用的定性方法。我们提出了一个使用二进制函数,即一个区域的共性相当于对其指标功能的简单二次曲线不平等制约的曲线物体表示的新方法。首先,通过将图像分割结果与一个带有和不带有噪音的组合前和二次曲线机体计算结果结合起来,提出了模型。然后,这些模型被归纳为具有四进制不平等的二进制函数的一般优化问题。根据线性化技术提出了数值算法,在这个技术中,线性问题通过一种有保证的趋同性乘数的准交替方向方法来解决。数字实验表明,在准确和计算时间中,拟议图像分割和锥体船体计算方法的效率和效力。