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Improving Classification of Neural Networks by Reducing Lens Aperture

机译:通过减少透镜孔改善神经网络的分类

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摘要

Image blur strongly degrades object recognition. We propose a mechanism to reduce defocus blur by reducing the aperture of the camera lens, and show that it leads to a far more robust recognition. The recognition is demonstrated via a Neural Network architecture that we have previously proposed for blurred face recognition.
机译:图像模糊强烈降低了对象识别。我们提出了一种通过减少相机镜头的光圈来减少散焦模糊的机制,并表明它导致更强大的识别。通过神经网络架构证明了识别,我们以前提出了用于模糊的面部识别。

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