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首页> 外文期刊>Journal of Imaging >LaBGen-P-Semantic: A First Step for Leveraging Semantic Segmentation in Background Generation
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LaBGen-P-Semantic: A First Step for Leveraging Semantic Segmentation in Background Generation

机译:LaBGen-P-语义:在背景生成中利用语义分割的第一步

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摘要

Given a video sequence acquired from a fixed camera, the stationary background generation problem consists of generating a unique image estimating the stationary background of the sequence. During the IEEE Scene Background Modeling Contest (SBMC) organized in 2016, we presented the LaBGen-P method. In short, this method relies on a motion detection algorithm for selecting, for each pixel location, a given amount of pixel intensities that are most likely static by keeping the ones with the smallest quantities of motion. These quantities are estimated by aggregating the motion scores returned by the motion detection algorithm in the spatial neighborhood of the pixel. After this selection process, the background image is then generated by blending the selected intensities with a median filter. In our previous works, we showed that using a temporally-memoryless motion detection, detecting motion between two frames without relying on additional temporal information, leads our method to achieve the best performance. In this work, we go one step further by developing LaBGen-P-Semantic, a variant of LaBGen-P, the motion detection step of which is built on the current frame only by using semantic segmentation. For this purpose, two intra-frame motion detection algorithms, detecting motion from a unique frame, are presented and compared. Our experiments, carried out on the Scene Background Initialization (SBI) and SceneBackgroundModeling.NET (SBMnet) datasets, show that leveraging semantic segmentation improves the robustness against intermittent motions, background motions and very short video sequences, which are among the main challenges in the background generation field. Moreover, our results confirm that using an intra-frame motion detection is an appropriate choice for our method and paves the way for more techniques based on semantic segmentation.
机译:给定从固定摄像机获取的视频序列,固定背景生成问题包括生成估计序列固定背景的唯一图像。在2016年组织的IEEE场景背景建模竞赛(SBMC)中,我们介绍了LaBGen-P方法。简而言之,该方法依靠运动检测算法为每个像素位置选择给定数量的像素强度,这些像素强度通过保持运动量最少的像素强度很可能是静态的。通过在像素的空间邻域中汇总由运动检测算法返回的运动得分来估算这些量。在此选择过程之后,然后通过将所选强度与中值滤镜混合来生成背景图像。在我们之前的工作中,我们证明了使用无时间记忆的运动检测方法,无需依赖其他时间信息即可检测两个帧之间的运动,从而使我们的方法达到了最佳性能。在这项工作中,我们通过开发LaBGen-P-Semantic(一种LaBGen-P的变体)进一步走了一步,其运动检测步骤仅通过使用语义分段在当前帧上构建。为此,提出并比较了两种帧内运动检测算法,它们从唯一的帧中检测运动。我们在场景背景初始化(SBI)和SceneBackgroundModeling.NET(SBMnet)数据集上进行的实验表明,利用语义分段可以提高针对间歇性运动,背景运动和非常短的视频序列的鲁棒性,这些是间歇性运动,背景运动和非常短的视频序列的挑战。背景生成字段。此外,我们的结果证实,使用帧内运动检测是我们方法的合适选择,并为基于语义分割的更多技术铺平了道路。

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