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Centered Multi-Task Generative Adversarial Network for Small Object Detection

机译:用于小对象检测的中心多任务生成的对抗网络

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摘要

Despite the breakthroughs in accuracy and efficiency of object detection using deep neural networks, the performance of small object detection is far from satisfactory. Gaze estimation has developed significantly due to the development of visual sensors. Combining object detection with gaze estimation can significantly improve the performance of small object detection. This paper presents a centered multi-task generative adversarial network (CMTGAN), which combines small object detection and gaze estimation. To achieve this, we propose a generative adversarial network (GAN) capable of image super-resolution and two-stage small object detection. We exploit a generator in CMTGAN for image super-resolution and a discriminator for object detection. We introduce an artificial texture loss into the generator to retain the original feature of small objects. We also use a centered mask in the generator to make the network focus on the central part of images where small objects are more likely to appear in our method. We propose a discriminator with detection loss for two-stage small object detection, which can be adapted to other GANs for object detection. Compared with existing interpolation methods, the super-resolution images generated by CMTGAN are more explicit and contain more information. Experiments show that our method exhibits a better detection performance than mainstream methods.
机译:尽管使用深神经网络的物体检测的准确性和效率突破,但小物体检测的性能远远令人满意。由于视觉传感器的发展,凝视估计显着发展。将对象检测与凝视估计相结合可以显着提高小物体检测的性能。本文介绍了一个以居中的多任务生成对抗网络(CMTGAN)组合了小对象检测和凝视估计。为此,我们提出了一种能够进行图像超分辨率和两级小物体检测的生成的对抗性网络(GAN)。我们在CMTGAN中利用一个发电机进行图像超分辨率和用于物体检测的鉴别器。我们将人工纹理损失引入发电机中以保留小物体的原始特征。我们还在发电机中使用居中掩码,使网络专注于图像的中央部分,其中小对象更容易出现在我们的方法中。我们提出了一种具有检测损耗的鉴别器,用于两级小物体检测,这可以适应其他GAN进行对象检测。与现有的插值方法相比,CMTGAN生成的超分辨率图像更加明确并包含更多信息。实验表明,我们的方法表现出比主流方法更好的检测性能。

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