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Neighborhood Supported Model Level Fuzzy Aggregation for Moving Object Segmentation

机译:邻域支持的模型级模糊聚合的运动目标分割

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摘要

We propose a new algorithm for moving object detection in the presence of challenging dynamic background conditions. We use a set of fuzzy aggregated multifeature similarity measures applied on multiple models corresponding to multimodal backgrounds. The algorithm is enriched with a neighborhood-supported model initialization strategy for faster convergence. A model level fuzzy aggregation measure driven background model maintenance ensures more robustness. Similarity functions are evaluated between the corresponding elements of the current feature vector and the model feature vectors. Concepts from Sugeno and Choquet integrals are incorporated in our algorithm to compute fuzzy similarities from the ordered similarity function values for each model. Model updating and the foreground/background classification decision is based on the set of fuzzy integrals. Our proposed algorithm is shown to outperform other multi-model background subtraction algorithms. The proposed approach completely avoids explicit offline training to initialize background model and can be initialized with moving objects also. The feature space uses a combination of intensity and statistical texture features for better object localization and robustness. Our qualitative and quantitative studies illustrate the mitigation of varieties of challenging situations by our approach.
机译:我们提出了一种新算法,用于在充满挑战的动态背景条件下检测运动物体。我们使用一组模糊聚合的多特征相似性度量,这些度量适用于对应于多模式背景的多个模型。该算法丰富了邻域支持的模型初始化策略,可加快收敛速度​​。由模型级别的模糊聚合度量驱动的背景模型维护可确保更高的鲁棒性。在当前特征向量和模型特征向量的相应元素之间评估相似性函数。 Sugeno和Choquet积分的概念已纳入我们的算法,以根据每个模型的有序相似性函数值计算模糊相似性。模型更新和前景/背景分类决策基于模糊积分集。我们提出的算法显示出优于其他多模型背景扣除算法。所提出的方法完全避免了显式的离线训练来初始化背景模型,并且还可以通过移动对象来初始化。特征空间结合使用强度和统计纹理特征,以实现更好的对象定位和鲁棒性。我们的定性和定量研究表明,通过我们的方法可以缓解各种具有挑战性的情况。

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