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Robust Biometric Recognition From Palm Depth Images for Gloved Hands

机译:掌深图像对手套手的鲁棒生物识别

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摘要

Biometric recognition can be used to improve gesture-based interfaces by automatically identifying operators. Traditional palm biometric recognition techniques depend on palm appearance features, but these features are not available in an operating theater where gloves are worn. We propose a depth-based solution for palm biometric recognition. Based on the depth image, our system automatically segments the user's palm and extracts finger dimensions. The finger dimensions are further scaled according to the sensed depth to obtain the true finger dimensions, which are then used as features to characterize the palm. Finally, a modified -nearest neighbors algorithm that assigns class labels based on the centroid displacement of each class in the neighboring points is applied to recognize the palm based on the geometric features. An accuracy of 96.24% was achieved for the biometric recognition of 4057 gloved palm samples captured at different angles and depths from 27 users. This accuracy is comparable with those of other state-of-the-art classification algorithms and demonstrates that biometric recognition may be viable for settings with gloved hands such as surgery.
机译:生物特征识别可用于通过自动识别操作员来改善基于手势的界面。传统的手掌生物识别技术取决于手掌的外观特征,但是在戴着手套的手术室中无法使用这些特征。我们提出了一种基于深度的手掌生物识别解决方案。基于深度图像,我们的系统会自动分割用户的手掌并提取手指尺寸。根据所感测的深度进一步缩放手指的尺寸以获得真实的手指尺寸,然后将其用作表征手掌的特征。最后,基于每个类别在邻近点的质心位移分配类别标签的改进的近邻算法被应用于基于几何特征识别手掌。对于从27个用户处以不同角度和深度捕获的4057个带手套的手掌样品进行生物识别,可达到96.24%的准确度。此准确性可与其他最新分类算法相媲美,并证明生物特征识别对于戴手套的双手(例如手术)可能是可行的。

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