基于松弛的弱光视频运动目标联合分割与背景估计

P. Aguiar, José M. F. Moura
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引用次数: 3

摘要

当场景背景已知并且运动物体的强度与背景强度形成对比时,通过利用遮挡(例如背景减法)很容易捕获物体。然而,当处理一般场景时,背景是未知的,研究人员大多试图通过使用运动线索而不是遮挡来分割运动物体。由于运动只能在高度纹理化的区域精确计算,当前的运动分割方法要么无法分割低纹理化的物体,要么需要昂贵的正则化技术。我们提出了一种计算简单的算法,并对在低光场景中获得的低纹理/低对比度视频中的运动物体进行分割测试。序列中的图像建模考虑了运动物体的刚性和背景的遮挡。我们将这个问题表述为惩罚可能性成本的最小化。惩罚项权值的松弛使得非线性最小化问题得到了一个简单的解。我们描述了说明我们的方法的良好性能的实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Segmentation of Moving Object and Estimation of Background in Low-Light Video using Relaxation
When the scene background is known and the intensity of moving objects contrasts with the intensity of the background, the objects are easily captured by exploiting occlusion, e.g., background-subtraction. However, when processing general scenes, the background is not known and researchers have mostly attempted to segment moving objects by using motion cues rather than occlusion. Since motion can only be accurately computed at highly textured regions, current motion segmentation methods either fail to segment low textured objects, or require expensive regularization techniques. We present a computationally simple algorithm and test it with segmentation of moving objects in low texture / low contrast videos that are obtained in low-light scenes. The images in the sequence are modeled taking into account the rigidity of the moving object and the occlusion of the background. We formulate the problem as the minimization of a penalized likelihood cost. Relaxation of the weight of the penalty term leads to a simple solution to the nonlinear minimization. We describe experiments that illustrate the good performance of our method.
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