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Air-Writing Recognition—Part II: Detection and Recognition of Writing Activity in Continuous Stream of Motion Data

机译:空中书写识别-第二部分:连续数据流中笔迹活动的检测与识别

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Air-writing refers to writing of characters or words in the free space by hand or finger movements. We address air-writing recognition problems in two companion papers. Part 2 addresses detecting and recognizing air-writing activities that are embedded in a continuous motion trajectory without delimitation. Detection of intended writing activities among superfluous finger movements unrelated to letters or words presents a challenge that needs to be treated separately from the traditional problem of pattern recognition. We first present a dataset that contains a mixture of writing and nonwriting finger motions in each recording. The LEAP from Leap Motion is used for marker-free and glove-free finger tracking. We propose a window-based approach that automatically detects and extracts the air-writing event in a continuous stream of motion data, containing stray finger movements unrelated to writing. Consecutive writing events are converted into a writing segment. The recognition performance is further evaluated based on the detected writing segment. Our main contribution is to build an air-writing system encompassing both detection and recognition stages and to give insights into how the detected writing segments affect the recognition result. With leave-one-out cross validation, the proposed system achieves an overall segment error rate of 1.15% for word-based recognition and 9.84% for letter-based recognition.
机译:空中书写是指通过手或手指的运动在自由空间中书写字符或单词。我们在两篇随附的论文中解决了空中书写识别问题。第2部分介绍了无限制地检测和识别嵌入连续运动轨迹中的空中书写活动。在与字母或单词无关的多余手指运动中检测预期的书写活动提出了一个挑战,需要与传统的模式识别问题分开处理。我们首先提供一个数据集,其中包含每个记录中书写和非书写手指运动的混合。 Leap Motion的LEAP用于无标记和无手套的手指跟踪。我们提出了一种基于窗口的方法,该方法可以自动检测并提取连续的运动数据流中的空中书写事件,其中包含与书写无关的流浪手指运动。连续书写事件将转换为书写段。基于检测到的书写段进一步评估识别性能。我们的主要贡献是建立一个同时包含检测和识别阶段的空中书写系统,并深入了解检测到的书写片段如何影响识别结果。通过留一法交叉验证,所提出的系统对于基于单词的识别实现总体段错误率为1.15%,对于基于字母的识别达到9.84%。

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