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Novel Image Recognition Based on Subspace and SIFT

机译:基于子空间和SIFT的新型图像识别

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摘要

In the light of the deep analyses of subspace recognition and SIFT recognition, a novel image recognition based on subspace and SIFT is proposed to provide a recognition from global features to minutiae features. First, subspace is used to implement coarse image recognition, gaining one or more candidate samples with different identities. Then, a special SIFT recognition environment is designed, in which the approach takes all the images as objects, builds a multi-object sample image with its size limited below a certain size, detects SIFT points based on object regions and recognizes the test image through SIFT point registration statistical vote. The experiments show that the designed SIFT recognition environment can increase SIFT recognition accuracy and the method based on subspace and SIFT can provide accurate recognitions in a mass of images. Under some special environments, recognition accuracy tends to 100%.
机译:鉴于对子空间识别和SIFT识别的深入分析,提出了一种基于子空间和SIFT的新型图像识别,以提供从全局特征到细节特征的识别。首先,子空间用于实现粗略图像识别,获得一个或多个具有不同标识的候选样本。然后,设计了一种特殊的SIFT识别环境,在该环境中,该方法将所有图像作为对象,构建大小被限制在一定大小以下的多对象样本图像,根据对象区域检测SIFT点,并通过该图像识别测试图像。 SIFT点注册统计投票。实验表明,所设计的SIFT识别环境可以提高SIFT识别的准确性,并且基于子空间和SIFT的方法可以在大量图像中提供准确的识别。在某些特殊环境下,识别精度趋于100%。

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