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A Two Stage Framework for Detection and Segmentation of Writing Events in Air-Written Assamese Characters

机译:用于空写assamese字符中写作事件的检测和分割的两个阶段框架

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摘要

Gestural air-writing involves the process of writing continuous characters or words in free space using hand or finger motion. It differs from traditional pen-based writing from the fact that it does not contain delimiting points which helps in demarcation of valid writing segments. Thus, in gestural air-writing, detection of meaningful writing events from a continuous gestural sequence containing irrelevant writing movements is an intricate task which needs special attention. This paper presents an automatic method of gesture spotting and segmentation which identifies the meaningful air-written character segments confined within a continuous character pattern using a hybrid spa-tiotemporal and statistical feature set. A sliding window-based approach is employed for extracting the writing events from a continuous stream of hand-motion data, suppressing the superfluous idle data points. Consecutive writing events are then categorized into valid character segments and redundant ones. The relative performance of the proposed system is examined by taking various Assamese characters into consideration. Experimental results reveal that the proposed model achieves an overall segment error rate of 1.31%.
机译:手势空气写入涉及使用手或手指运动在自由空间中写出连续字符或单词的过程。它与传统的笔的写作不同,它不包含限定点,这有助于有效写入段的划分。因此,在姿态空气写入中,从含有无关写作运动的连续手势序列检测有意义的写作事件是一种需要特别注意的复杂任务。本文介绍了手势斑点和分段的自动方法,该分割识别使用混合SPA - 天敌和统计特征集在连续字符模式内限制的有意义的空写字符段。基于滑动窗口的方法用于从连续的手动数据流中提取写入事件,抑制多余的空闲数据点。然后将连续的写入事件分类为有效的字符段和冗余段。通过考虑各种assamese特征来检查所提出的系统的相对性能。实验结果表明,拟议的模型实现了1.31%的总段错误率。

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