首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >HAND GESTURE RECOGNITION USING ENSEMBLES OF RADIAL BASIS FUNCTION (RBF) NETWORKS AND DECISION TREES
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HAND GESTURE RECOGNITION USING ENSEMBLES OF RADIAL BASIS FUNCTION (RBF) NETWORKS AND DECISION TREES

机译:利用径向基函数网络和决策树进行手势的手势识别

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Hand gestures are the natural form of communication among people, yet human-computer interaction is still limited to mice movements. The use of hand gestures in the field of human-computer interaction has attracted renewed interest in the past several years. Special glove-based devices have been developed to analyze finger and hand motion and use them to manipulate and explore virtual worlds. To further enrich the naturalness of the interaction, different computer vision-based techniques have been developed. At the same time the need for more efficient systems has resulted in new gesture recognition approaches. In this paper we present an hybrid intelligent system for hand gesture recognition. The hybrid approach consists of an ensemble of connectionist networks — radial basis functions (RBF) — and inductive decision trees (AQDT). Cross Validation (CV) experimental results yield a false negative rate of 1.7% and a false positive rate of 1% while the evaluation takes place on a data base including 150 images corresponding to 15 gestures of 5 subjects. In order to assess the robustness of the system, the vocabulary of the gestures has been increased from 15 to 25 and the size of the database from 150 to 750 images corresponding now to 15 subjects. Cross Validation (CV) experimental results yield a false negative rate of 3.6% and a false positive rate of 1.8% respectively. The benefits of our hybrid architecture include (ⅰ) robustness via query by consensus as provided by ensembles of networks when facing the inherent variability of the image formation and data acquisition process, (ⅱ) classifications made using decision trees, (ⅲ) flexible and adaptive thresholds as opposed to ad hoc and hard thresholds and (ⅳ) interpret ability of the way classification and retrieval is eventually achieved.
机译:手势是人与人之间交流的自然形式,但是人机交互仍然仅限于鼠标移动。在过去的几年中,在人机交互领域中使用手势引起了新的兴趣。已经开发出基于手套的特殊设备来分析手指和手的动作,并使用它们来操纵和探索虚拟世界。为了进一步丰富交互的自然性,已经开发了不同的基于计算机视觉的技术。同时,对更有效系统的需求导致了新的手势识别方法。在本文中,我们提出了一种用于手势识别的混合智能系统。混合方法由连接主义网络(径向基函数(RBF))和归纳决策树(AQDT)组成。交叉验证(CV)实验结果得出的假阴性率为1.7%,假阳性率为1%,而评估是在包含150张图像的数据库上进行的,该图像与5个对象的15个手势相对应。为了评估系统的鲁棒性,手势的词汇量已从15个增加到25个,数据库的大小从150个增加到750个,现在对应15个对象。交叉验证(CV)实验结果分别产生3.6%的假阴性率和1.8%的假阳性率。我们的混合架构的优势包括(ⅰ)面对图像形成和数据采集过程的固有可变性时,由网络集成提供的通过共识查询的鲁棒性;(ⅱ)使用决策树进行分类;(ⅲ)灵活且自适应与临时和硬性阈值相对应的阈值,以及(ⅳ)最终实现分类和检索方式的解释能力。

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