论文标题
基于双前景的视频中的静态对象检测和细分与噪声过滤的差异
Static object detection and segmentation in videos based on dual foregrounds difference with noise filtering
论文作者
论文摘要
本文在混乱场景的视频中介绍了静态对象检测和分割方法。由于在许多监视应用中存在移动对象,因此稳健的静态对象检测仍然具有挑战性的任务。难度的水平受到您如何标记要标记为静态对象的静态的极大影响,该对象不会建立原始背景,而在不同时间出现在视频中。在这种情况下,基于框架差异概念的背景减法技术应用于静态对象的识别。首先,我们通过计算每个帧相对于静态参考框架的差异来估计框架差异的前景掩模图像。使用高斯MOG方法的混合物来检测移动粒子,然后从框架差异前景掩模中减去前景掩模。预处理技术,照明均衡和降低方法用于处理低对比度并减少空气中散射材料的噪声,例如水滴和灰尘颗粒。最后,应用了一组数学形态操作和最大的连接组分分析来分割对象并抑制噪声。所提出的方法是为摇滚电台应用程序构建的,并通过实际,合成和两个公共数据集有效验证。结果表明,提出的方法可以鲁棒检测,对静态对象进行了分割,而无需任何先前的跟踪信息。
This paper presents static object detection and segmentation method in videos from cluttered scenes. Robust static object detection is still challenging task due to presence of moving objects in many surveillance applications. The level of difficulty is extremely influenced by on how you label the object to be identified as static that do not establish the original background but appeared in the video at different time. In this context, background subtraction technique based on the frame difference concept is applied to the identification of static objects. Firstly, we estimate a frame differencing foreground mask image by computing the difference of each frame with respect to a static reference frame. The Mixture of Gaussian MOG method is applied to detect the moving particles and then outcome foreground mask is subtracted from frame differencing foreground mask. Pre-processing techniques, illumination equalization and de-hazing methods are applied to handle low contrast and to reduce the noise from scattered materials in the air e.g. water droplets and dust particles. Finally, a set of mathematical morphological operation and largest connected-component analysis is applied to segment the object and suppress the noise. The proposed method was built for rock breaker station application and effectively validated with real, synthetic and two public data sets. The results demonstrate the proposed approach can robustly detect, segmented the static objects without any prior information of tracking.