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An Improved SIFT Feature Extraction Method for Tyre Tread Patterns Retrieval

机译:一种改进的SIFT特征提取方法用于胎面花纹检索

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SIFT features have been found to be effective in describing image textures. Because SIFT features have some great characteristics, such as translation invariance, zooming in and out invariance, spin invariance and affine invariance, etc, so the image retrieval precision is satisfactory usually. However, in Content Based Image Retrieval (CBIR), there are so many SIFT feature points extracted from an image and the size of SIFT-based feature vectors can be up to 128 dimensions. So, even though the prevision based on SIFT feature is high, the retrieval speed is low. To relieve this problem, this paper proposes an improved SIFT feature point extraction method. First of all, taking 2-level wavelet transform to the image, then setting its low-frequency sub-band to zero and reconstructing the image by its 6high frequency sub-bands. The SIFT features are then extracted from the reconstructed 'high-frequency images' for retrieval purpose. This method can reduce the number of SIFT feature points by 71.2%. Tested on a tyre tread pattern dataset, the proposed method is found to be able to significantly improve the retrieval speed while the retrieval precision is still better than other existing methods.
机译:已经发现SIFT特征在描述图像纹理方面是有效的。由于SIFT特征具有平移不变,缩放不变,自旋不变和仿射不变等较大的特性,因此图像检索精度通常令人满意。但是,在基于内容的图像检索(CBIR)中,从图像中提取了太多的SIFT特征点,并且基于SIFT的特征向量的大小最多可以达到128个维度。因此,即使基于SIFT功能的预定义很高,但检索速度仍然很低。为了缓解这个问题,本文提出了一种改进的SIFT特征点提取方法。首先,对图像进行2级小波变换,然后将其低频子带设置为零,并通过其6个高频子带重建图像。然后从重建的“高频图像”中提取SIFT特征以进行检索。这种方法可以将SIFT特征点的数量减少71.2%。在轮胎胎面花纹数据集上进行测试,发现该方法能够显着提高检索速度,同时检索精度仍优于其他现有方法。

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