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Artwork painting identification method for panorama based on adaptive rectilinear projection and optimized ASIFT

机译:基于自适应直线投影和优化ASIFT的全景图作品识别方法

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摘要

In the paper, the authors present an artwork painting identification method for panorama based on adaptive rectilinear projection and optimized ASIFT (Affine Scale-Invariant Feature Transform). Firstly, the authors use the panorama dataset to train the artwork painting detection network to obtain the location information of artwork paintings. Secondly, the authors use the adaptive rectilinear projection to map the artwork painting into a square image with a fixed size. Then the authors use the image enhancement method to improve the image quality. Finally, the authors use the optimized ASIFT for features extraction and image matching. Several contrast experiments were conducted on the artwork paintings panorama dataset for artwork paintings identification. The results show that the proposed method can achieve 96% identification accuracy on average for the whole test artwork paintings panorama dataset. The proposed adaptive rectilinear based-method can improve at least 20% of the recognition accuracy. The proposed optimized ASIFT can improve at least 30% of the identification accuracy than SIFT. The authors also study other factors such as the size of the original artwork image, the image matching threshold, whether using image enhancement or not. The results show the size of the original artwork has little influence on the artwork identification in the panorama. The image matching threshold with 2.0 is better than 3.0. Furthermore, using the image enhancement method can improve about 2% of the identification accuracy.
机译:在本文中,作者提出了一种基于自适应直线投影和优化ASIFT(仿射尺度不变特征变换)的全景图艺术品绘画识别方法。首先,作者使用全景数据集训练艺术品绘画检测网络,以获得艺术品绘画的位置信息。其次,作者使用自适应直线投影将绘画作品映射为具有固定大小的正方形图像。然后作者使用图像增强方法来改善图像质量。最后,作者将优化的ASIFT用于特征提取和图像匹配。在艺术品绘画全景数据集上进行了一些对比实验,以识别艺术品绘画。结果表明,所提出的方法对整个测试图样全景图数据集的识别率平均达到96%。所提出的基于自适应直线的方法可以提高至少20%的识别精度。所提出的优化的ASIFT比SIFT可以提高至少30%的识别精度。作者还研究了其他因素,例如原始图稿图像的大小,图像匹配阈值,无论是否使用图像增强。结果表明,原始图稿的大小对全景图中的图稿识别几乎没有影响。具有2.0的图像匹配阈值优于3.0。此外,使用图像增强方法可以提高大约2%的识别精度。

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