在多个图像中进行对象共标记

Xi Chen, Arpit Jain, L. Davis
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引用次数: 6

摘要

我们引入了一个新的问题,称为对象共标注,其目标是共同标注同一场景中不具有时间一致性的多幅图像。为了解决这一问题,我们提出了一种自适应的联合分割和识别框架。我们提出了一个目标函数,不仅考虑外观,而且考虑场景图像的外观和上下文一致性。使用有效的二次规划求解器最小化代价函数的松弛形式。与单独标记每个图像相比,我们的方法提高了标记性能。我们还展示了我们的共同标记框架在其他识别问题上的应用,如视频中的标签传播和相似场景中的物体识别。实验结果证明了该方法的有效性。
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Object co-labeling in multiple images
We introduce a new problem called object co-labeling where the goal is to jointly annotate multiple images of the same scene which do not have temporal consistency. We present an adaptive framework for joint segmentation and recognition to solve this problem. We propose an objective function that considers not only appearance but also appearance and context consistency across images of the scene. A relaxed form of the cost function is minimized using an efficient quadratic programming solver. Our approach improves labeling performance compared to labeling each image individually. We also show the application of our co-labeling framework to other recognition problems such as label propagation in videos and object recognition in similar scenes. Experimental results demonstrates the efficacy of our approach.
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