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Dataset Modification Captured in Uncontrolled Conditions

机译:在不受控制的条件下捕获的数据集修改

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There are many computer vision tasks where even the state-of-the-art object detection methods are not able to yield optimal results. The most interesting element of today are Generative Adversarial Networks. These networks are able to handle various challenging transformation or difficult generative tasks. In this paper, we will try to improve the success of state of the art of detection models by applying appropriate segmentation and transformation on historical images. We have modified a set of historical images using GAN networks. Then we have compared object detectors on the original images with the new generated ones. The main motivation of the research is to improve the facial biometric system, which highly depends on detection phase. At the end we have compared the outputs from non-face detectors before and after dataset modification.
机译:在许多计算机视觉任务中,即使是最新的对象检测方法也无法产生最佳结果。当今最有趣的元素是生成对抗网络。这些网络能够处理各种挑战性的转换或困难的生成任务。在本文中,我们将尝试通过对历史图像进行适当的分割和变换来提高先进的检测模型的成功率。我们使用GAN网络修改了一组历史图像。然后,我们将原始图像上的对象检测器与新生成的对象检测器进行了比较。该研究的主要动机是改善面部生物识别系统,该系统高度依赖于检测阶段。最后,我们比较了数据集修改前后非面部检测器的输出。

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