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Random clustering ferns for multimodal object recognition

机译:用于多模式对象识别的随机聚类蕨类植物

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摘要

We propose an efficient and robust method for the recognition of objects exhibiting multiple intra-class modes, where each one is associated with a particular object appearance. The proposed method, called random clustering ferns, combines synergically a single and real-time classifier, based on the boosted assembling of extremely randomized trees (ferns), with an unsupervised and probabilistic approach in order to recognize efficiently object instances in images and discover simultaneously the most prominent appearance modes of the object through tree-structured visual words. In particular, we use boosted random ferns and probabilistic latent semantic analysis to obtain a discriminative and multimodal classifier that automatically clusters the response of its randomized trees in function of the visual object appearance. The proposed method is validated extensively in synthetic and real experiments, showing that the method is capable of detecting objects with diverse and complex appearance distributions in real-time performance.
机译:我们提出了一种有效且鲁棒的方法,用于识别表现出多个帧内模式的对象,其中每个对象与特定对象外观相关联。所提出的方法称为随机聚类蕨类植物,基于极端随机树(蕨类植物)的增强组装,具有无监督和概率的方法,使协同组装和实时分类器组合在一起,以便在图像中有效地识别图像中的有效目标和发现通过树结构的视觉词来对象的最突出的外观模式。特别是,我们使用升级随机蕨类植物和概率潜在语义分析,以获得判别和多模式分类器,该分类器自动群集其随机树的响应在视觉对象外观的功能中。所提出的方法在合成和实验中广泛验证,表明该方法能够在实时性能中检测具有多样化和复杂的外观分布的物体。

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