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Hierarchical Elastic Graph Matching for Hand Gesture Recognition

机译:层次弹性图匹配在手势识别中的应用

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This paper proposes a hierarchical scheme for elastic graph matching hand posture recognition. The hierarchy is expressed in terms of weights assigned to visual features scattered over an elastic graph. The weights in graph's nodes are adapted according to their relative ability to enhance the recognition, and determined using adaptive boosting. A dictionary representing the variability of each gesture class is proposed, in the form of a collection of graphs (a bunch graph). Positions of nodes in the bunch graph are created using three techniques: manually, semi-automatic, and automatically. The recognition results show that the hierarchical weighting on features has significant discriminative power compared to the classic method (uniform weighting). Experimental results also show that the semi-automatically annotation method provides efficient and accurate performance in terms of two performance measures; cost function and accuracy.
机译:本文提出了一种用于弹性图匹配手姿势识别的分层方案。层次结构是根据分配给散布在弹性图上的视觉特征的权重来表示的。图节点中的权重根据其增强识别的相对能力进行调整,并使用自适应增强来确定。提出了一种表示每个手势类的可变性的字典,其形式为图形集合(一堆图形)。束图中的节点位置是使用三种技术创建的:手动,半自动和自动。识别结果表明,与经典方法(均匀加权)相比,特征的分层加权具有明显的判别力。实验结果还表明,半自动标注方法在两种性能指标上提供了有效而准确的性能。成本函数和准确性。

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