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Word Sign Recognition of Invariant Images Based on SURF with Laplacian Eigenmaps

机译:基于Laplacian Eigenmaps的Surf的不变图像的词标志识别

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This paper presents a recognition of sign language in the area of computer vision and pattern recognition system. The local features of invariant images were extracted using speeded up robust features (SURF) with dimensionality reduction techniques. Then, K-nearest neighbour classification technique is used for establishing the recognition system. The local feature descriptor of SURF was computationally complex for classifying the word signs. Laplacian eigenmaps has been combined with SURF to reduce dimensionality of feature descriptor and computation time for classification. In this paper, execution of recognition rate has been developed by using Laplacian eigenmaps of dimensionality reduction compared with other methods of principal component analysis and singular value decomposition. By applying Laplacian eigenmaps, sign classification accuracy was improved from 90 to 96% than the dimensionality reduction strategy.
机译:本文提出了计算机视觉和模式识别系统领域的手语识别。使用具有维度降低技术的加速强大的鲁棒特征(冲浪)提取不变图像的本地特征。然后,用于建立识别系统的K-CircleS邻邻分类技术。 Surf的本地特征描述符是计算值复杂的,用于对词牌分类。 Laplacian eIgenmaps已与冲浪相结合以减少特征描述符的维度和分类的计算时间。在本文中,通过使用Laplacian eIgenmaps的维持量减少和奇异值分解的其他方法,已经开发了识别率的执行。通过应用Laplacian eIgenmaps,符号分类精度从90到96 %的提高而不是维度减少策略。

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