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Behavior Discovery and Alignment of Articulated Object Classes from Unstructured Video

机译:来自非结构化视频的特征对象类的行为发现和对齐

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摘要

We propose an automatic system for organizing the content of a collection of unstructured videos of an articulated object class (e.g., tiger, horse). By exploiting the recurring motion patterns of the class across videos, our system: (1) identifies its characteristic behaviors, and (2) recovers pixel-to-pixel alignments across different instances. Our system can be useful for organizing video collections for indexing and retrieval. Moreover, it can be a platform for learning the appearance or behaviors of object classes from Internet video. Traditional supervised techniques cannot exploit this wealth of data directly, as they require a large amount of time-consuming manual annotations. The behavior discovery stage generates temporal video intervals, each automatically trimmed to one instance of the discovered behavior, clustered by type. It relies on our novel motion representation for articulated motion based on the displacement of ordered pairs of trajectories. The alignment stage aligns hundreds of instances of the class to a great accuracy despite considerable appearance variations (e.g., an adult tiger and a cub). It uses a flexible thin plate spline deformation model that can vary through time. We carefully evaluate each step of our system on a new, fully annotated dataset. On behavior discovery, we outperform the state-of-the-art improved dense trajectory feature descriptor. On spatial alignment, we outperform the popular SIFT Flow algorithm.
机译:我们提出了一种自动系统,用于组织铰接对象类的非结构化视频集合的内容(例如,老虎,马)。通过利用跨越视频的类的重复运动模式,我们的系统:(1)标识其特征行为,(2)逐渐恢复不同实例的像素到像素对齐。我们的系统对于组织用于索引和检索的视频集合有用。此外,它可以是用于学习来自因特网视频的对象类的外观或行为的平台。传统的监督技术无法直接利用这一丰富的数据,因为它们需要大量耗时的手动注释。行为发现阶段生成时间视频间隔,每个时间将自动修剪到由类型群集的发现行为的一个实例。它依赖于我们的新运动表示,用于基于有序对轨迹的位移的铰接运动。尽管有相当大的外观变化(例如成年人老虎和幼崽),则对准阶段将数百个课程的实例对准至高精度。它使用灵活的薄板样条样片变形模型,可以随时间变化。我们仔细评估了我们系统的每个步骤,在新的完全注释的数据集上。关于行为发现,我们优于最先进的改进的密集轨迹特征描述符。在空间对齐时,我们优于流行的筛选流量算法。

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