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A Hybrid Generative/Discriminative Model Based Object Tracking Primary Exploration

机译:基于混合生成/鉴别模型的对象跟踪初级探索

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Based on analysis and discussion of object representation, a hybrid model based tracking by detection algorithm is presented as yet a primary exploration. The whole system is made of a learning-detecting two phase loop. Object model is built on a general Haar-like feature space which is automatically generated and extracted by a special random projection. Our proposed algorithm involves two type of methods for object modeling, one is to learn a transformation matrix by Principal Component Analysis (PCA) as the multi-view appearance model of the target object, and the other is to learn a classifier by Fisher Linear Discriminant Analysis (FLD) as the classification between the foreground and the background. We extend the Fisher criterion to a multi-mode background situation, which is used to formulate features' discriminating power as feature weighting from the online captured positive/negative training data. In additionally, a two-stage detection is involved, in which all input samples firstly are tested by the learned FLD classifier to pick up candidates, then amongst candidates the maximum likelihood to the target template as the final detection result is searched for by PCA code matching. All generative model, discriminative model and target templates should online update due to appearance variation. A number of experiments illustrate that the proposed hybrid model based tracking algorithm does has advantages.
机译:基于分析和对象表示的讨论中,由检测算法的混合模型基于跟踪被呈现为又一个主要的探索。整个系统由一个学习检测两个相循环。对象模型是建立在其被自动生成,并通过一个特殊的随机投影提取的一般类Haar特征空间。我们提出的算法包括两个类型的对象建模的方法,一种是通过主成分分析(PCA)作为目标对象的多视点外观模型学习的变换矩阵,另一种是由Fisher线性判别学习分类器分析(FLD)的前景和背景之间的分类。我们对Fisher准则扩展到多模式的背景情况,这是用来制定功能从网上捕捉到正/负的训练数据区分能力为特征加权。在附加地,两阶段检测参与,其中所有输入样本首先由学习FLD分类器进行测试,以拾取候选,然后之中候选最大似然的目标模板作为最终检测结果中搜索由PCA代码匹配。所有生成模型,判别模型和目标模板应该进行在线更新,由于外观的变化。一些实验表明,该提出的混合模型基于跟踪算法确实具有优势。

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