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Change Detection in Crowded Underwater Scenes: Via an Extended Gaussian Switch Model Combined with a Flux Tensor Pre-segmentation

机译:在拥挤的水下场景中改变检测:通过扩展高斯开关模型与磁通张量预分割相结合

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In this paper a new approach for change detection in videos of crowded scenes is proposed with the extended Gaussian Switch Model in combination with a Flux Tensor pre-segmentation. The extended Gaussian Switch Model enhances the previous method by combining it with the idea of the Mixture of Gaussian approach and an intelligent update scheme which made it possible to create more accurate background models even for difficult scenes. Furthermore, a foreground model was integrated and could deliver valuable information in the segmentation process. To deal with very crowded areas in the scene - where the background is not visible most of the time - we use the Flux Tensor to create a first coarse segmentation of the current frame and only update areas that are almost motionless and therefore with high certainty should be classified as background. To ensure the spatial coherence of the final segmentations, the N~2Cut approach is added as a spatial model after the background subtraction step. The evaluation was done on an underwater change detection datasets and showed significant improvements over previous methods, especially in the crowded scenes.
机译:本文提出了一种新的用于在拥挤场景中改变检测的新方法,与扩展的高斯开关模型结合助焊剂张量预分割。扩展高斯开关型号通过与高斯方法的混合和使人们有可能甚至很难场景创建更准确的背景模型的智能更新方案的想法结合增强了以前的方法。此外,集成了前景模型,可以在分割过程中提供有价值的信息。要处理现场的非常拥挤的区域 - 大部分时间都不可见的地方 - 我们使用磁通张量来创建当前帧的第一个粗细分,只能更新几乎不动的区域,因此应高度肯定被归类为背景。以确保最终分割的空间相干性,则N〜2Cut方法添加为背景减除步骤后的空间模型。在水下变化检测数据集上进行了评估,并且对以前的方法显示出显着的改进,特别是在拥挤的场景中。

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