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Registration of Face Image Using Modified BRISK Feature Descriptor

机译:使用改良的BRISK特征描述符配准人脸图像

摘要

Automatic face recognition is a hot area of research in the field of computer vision. Even though a lot of research have been done in this field, still researchers are unable to develop an algorithm which can detect the face images under all possible real time conditions. Automatic face recognition algorithms are used in a variety of applications such as surveillance, automatic tagging, and human-robot interaction etc. The main problem faced by researchers working with the above real time problems is the uncertainty about the pose of the detected face, i.e. if the pose of the sensed image differ from the images in the trained database most of the existing algorithms will fail. So researchers suggested and proved that the detection accuracy against pose variation can be improved if we considered image registration as a preprocessing step prior to face recognition. In this work, scale and rotation invariant features have been used for image registration. The important steps in feature based image registration are preprocessing, feature detection, feature matching, transformation estimation, and resampling. In this work, feature detectors and descriptors like SIFT, SURF, FAST, DAISY and BRISK are used. Among all these descriptors the BRISK descriptor performs the best. To avoid mismatches, using some threshold values, a modified BRISK descriptor has been proposed in this work. Modified BRISK descriptor performs best in terms of maximum matching as compared to other state of arts descriptors. The next step is to calculate the transformation model which is capable of transforming the coordinates of sensed image to coordinates of reference image. Some radial basis functions are used in this step to design the proper transformation function. In resampling step, we used bilinear interpolation to compute some pixels in the output image. A new algorithm is proposed in this work to find out the possible image pairs from the train database corresponds to the input image, for doing image registration. In this work, image registration algorithms are simulated in MATLAB with different detector-descriptor combination and affine transformation matrix. For measuring the similarity between registered output image and the reference image, SSIM index and mutual information is used.
机译:自动面部识别是计算机视觉领域研究的热点。即使在该领域进行了大量研究,但研究人员仍无法开发一种能够在所有可能的实时条件下检测面部图像的算法。自动面部识别算法被用于各种应用中,例如监视,自动标记和人机交互等。研究上述实时问题的研究人员面临的主要问题是关于检测到的面部姿势的不确定性,即如果感测到的图像的姿势与训练后的数据库中的图像不同,则大多数现有算法将失败。因此,研究人员建议并证明,如果我们将图像配准作为面部识别之前的预处理步骤,则可以提高针对姿势变化的检测精度。在这项工作中,比例和旋转不变特征已用于图像配准。基于特征的图像配准的重要步骤是预处理,特征检测,特征匹配,变换估计和重采样。在这项工作中,使用了特征检测器和描述符,例如SIFT,SURF,FAST,DAISY和BRISK。在所有这些描述符中,BRISK描述符执行得最好。为了避免不匹配,使用一些阈值,已在这项工作中提出了一个经过修改的BRISK描述符。与其他现有技术的描述符相比,修改后的BRISK描述符在最大匹配方面表现最佳。下一步是计算转换模型,该模型能够将感测图像的坐标转换为参考图像的坐标。此步骤中使用了一些径向基函数来设计适当的变换函数。在重采样步骤中,我们使用了双线性插值法来计算输出图像中的一些像素。在这项工作中提出了一种新算法,从列车数据库中找出与输入图像相对应的可能图像对,以进行图像配准。在这项工作中,在MATLAB中使用不同的检测器/描述符组合和仿射变换矩阵对图像配准算法进行了仿真。为了测量配准的输出图像和参考图像之间的相似性,使用了SSIM索引和互信息。

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    G S Parnav;

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  • 年度 2015
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