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Measuring and reducing observational latency when recognizing actions

机译:识别动作时测量并减少观察潜伏期

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An important aspect in interactive, action-based interfaces is the latency in recognizing the action. High latency will cause the system's feedback to lag behind user actions, reducing the overall quality of the user experience. This paper presents a novel dataset and algorithms for reducing the latency in recognizing the action. Latency in classification is minimized with a classifier based on logistic regression that uses canonical poses to identify the action. The classifier is trained from the dataset using a learning formulation that makes it possible to train the classifier to reduce latency. The classifier is compared against both a Bag of Words and a Conditional Random Field classifier and is found to be superior in both pre-segmented and on-line classification tasks.
机译:交互式,基于动作的界面的一个重要方面是识别动作的延迟。高延迟会导致系统的反馈滞后于用户操作,从而降低了用户体验的整体质量。本文提出了一种新颖的数据集和算法,可减少识别动作的等待时间。使用基于典型姿势识别动作的逻辑回归的分类器,可将分类中的延迟最小化。使用学习公式从数据集中训练分类器,该学习公式可以训练分类器以减少等待时间。将分类器与“词袋”和“条件随机字段”分类器进行比较,发现该分类器在预分段和在线分类任务中均表现出色。

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