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Recognition of rotated images using the multi-valued neuron and rotation-invariant 2D Fourier descriptors

机译:使用多值神经元和旋转不变的2D傅立叶描述符识别旋转图像

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摘要

The Fourier descriptors paradigm is a well-established approach for affine-invariant characterization of shape contours. In the work presented here, we extend this method to images, and obtain a 2D Fourier representation that is invariant to image rotation. The proposed technique retains phase uniqueness, and therefore structural image information is not lost. Rotation-invariant phase coefficients were used to train a single multi-valued neuron (MVN) to recognize satellite and human face images rotated by a wide range of angles. Experiments yielded 100% and 96.43% classification rate for each data set, respectively. Recognition performance was additionally evaluated under effects of lossy JPEG compression and additive Gaussian noise. Preliminary results show that the derived rotation-invariant features combined with the MVN provide a promising scheme for efficient recognition of rotated images.
机译:傅里叶描述符范式是一种成熟的方法,用于仿形不变地刻画形状轮廓。在本文介绍的工作中,我们将此方法扩展到图像,并获得了不依赖于图像旋转的2D傅立叶表示。所提出的技术保留了相位唯一性,因此不会丢失结构图像信息。旋转不变的相位系数用于训练单个多值神经元(MVN),以识别以宽角度旋转的卫星和人脸图像。实验得出每个数据集的分类率分别为100%和96.43%。在有损JPEG压缩和加性高斯噪声的影响下,还对识别性能进行了评估。初步结果表明,导出的旋转不变特征与MVN相结合,为有效识别旋转图像提供了一种有前途的方案。

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