Air-Writing Recognition-Part II: Detection and Recognition of Writing Activity in Continuous Stream of Motion Data
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 delim...
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Veröffentlicht in: | IEEE transactions on human-machine systems 2016-06, Vol.46 (3), p.436-444 |
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description | 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. |
doi_str_mv | 10.1109/THMS.2015.2492599 |
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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. 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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.</description><subject>Air-writing</subject><subject>air-writing detection</subject><subject>air-writing recognition</subject><subject>Construction</subject><subject>Covariance matrices</subject><subject>Fingers</subject><subject>fingerwriting</subject><subject>Man machine systems</subject><subject>Motion segmentation</subject><subject>Movements</subject><subject>Recognition</subject><subject>Recording</subject><subject>Segments</subject><subject>Streams</subject><subject>Tracking</subject><subject>Trajectory</subject><subject>Writing</subject><issn>2168-2291</issn><issn>2168-2305</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2016</creationdate><recordtype>article</recordtype><sourceid>RIE</sourceid><recordid>eNpdkVFLQyEUxyUKGrUPEL0IvfRyl3rnvdrb2KoNNoo26FGcV4dj06X3Bvv2edsWkSAeDr-f58AfgBuMehgj_rAYz-Y9gjDtkT4nlPMz0CG4YBnJET0_1YTjS9CNcY3SYYRSyjogDGzIPoKtrVvBd638yqXau-xNhhpOJo9wpGut2haUrvqLQG_gyRwk4svWe2gdHHqXeo1vIpzXQcttC878jzKStbwGF0Zuou4e3yuweH5aDMfZ9PVlMhxMM5VzUmclVlVJNF0qxrmpNFEVLhnHppCMVkudLifMyCUzjBf9ApWGMqwZYpwRTPIrcH_4dhf8Z6NjLbY2Kr3ZSKfTbgIznBzOizKhd__QtW-CS8uJdmSOUclaCh8oFXyMQRuxC3Yrw15gJNocRJuDaHMQxxySc3twrNb6ly9zQkia-w0KWYOq</recordid><startdate>201606</startdate><enddate>201606</enddate><creator>Mingyu Chen</creator><creator>AlRegib, Ghassan</creator><creator>Biing-Hwang Juang</creator><general>IEEE</general><general>The Institute of Electrical and Electronics Engineers, Inc. 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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.</abstract><cop>New York</cop><pub>IEEE</pub><doi>10.1109/THMS.2015.2492599</doi><tpages>9</tpages></addata></record> |
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subjects | Air-writing air-writing detection air-writing recognition Construction Covariance matrices Fingers fingerwriting Man machine systems Motion segmentation Movements Recognition Recording Segments Streams Tracking Trajectory Writing |
title | Air-Writing Recognition-Part II: Detection and Recognition of Writing Activity in Continuous Stream of Motion Data |
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