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RECONSTRUCTION-FREE DEEP CONVOLUTIONAL NEURAL NETWORKS FOR PARTIALLY OBSERVED IMAGES

机译:局部重构图像的无重构深层卷积神经网络

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Conventional image discrimination tasks are performed on fully observed images. In challenging real imaging scenarios, where sensing systems are energy demanding or need to operate with limited bandwidth and exposure-time budgets, or defective pixels, where the data collected often suffers from missing information, and this makes the task extremely hard. In this paper, we leverage Convolutional Neural Networks (CNNs) to extract information from partially observed images. While pre-trained CNNs fail significantly even with such a small percentage of the input missing, our proposed framework demonstrates the ability to overcome it after training on fully-observed and partially-observed images at a few observation ratios. We demonstrate that our method is indeed reconstruction-free, retraining-free and generalizable to previously untrained-on observation ratios and it remains effective in two different visual tasks - image classification and object detection. Our framework performs well even for test images with only 10% of pixels available and outperforms the reconstruct-then-classify pipeline in these challenging scenarios for small observation fractions.
机译:在完全观察的图像上执行传统的图像辨别任务。在具有挑战性的真实成像方案中,在感测系统是能量要求的情况下,或者需要用有限的带宽和曝光时间预算操作,或者缺陷的像素,其中收集的数据往往受到丢失的信息,这使得任务非常硬。在本文中,我们利用卷积神经网络(CNNS)从部分观察到的图像中提取信息。虽然预先训练的CNNS,即使具有如此小的输入缺失的缺失,虽然缺少了这么小的输入,但我们所提出的框架也表明了在少数观察比的完全观察和部分观察的图像上训练后克服它的能力。我们表明,我们的方法确实重建,再重新训练和完全直接于预先发生的观察比,并且在两个不同的视觉任务中保持有效 - 图像分类和对象检测。我们的框架甚至对于只有10 \%像素的测试图像表现良好,并且在这些具有挑战性的场景中占据了10 \%像素的像素中的测试图像,用于小观察分数。

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