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Image resizing by reconstruction from deep features

机译:从深度特征重建调整的图像大小

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Traditional image resizing methods usually work in pixel space and use various saliency measures. The challenge is to adjust the image shape while trying to preserve important content. In this paper we perform image resizing in feature space using the deep layers of a neural network containing rich important semantic information. We directly adjust the image feature maps, extracted from a pre-trained classification network, and reconstruct the resized image using neural-network based optimization. This novel approach leverages the hierarchical encoding of the network, and in particular, the high-level discriminative power of its deeper layers, that can recognize semantic regions and objects, thereby allowing maintenance of their aspect ratios. Our use of reconstruction from deep features results in less noticeable artifacts than use of imagespace resizing operators. We evaluate our method on benchmarks, compare it to alternative approaches, and demonstrate its strengths on challenging images.
机译:传统的图像调整方法通常在像素空间中工作,并使用各种显着性措施。挑战是调整图像形状,同时尝试保留重要内容。在本文中,我们使用包含丰富的重要语义信息的神经网络的深层执行在特征空间中调整的图像。我们直接调整从预先训练的分类网络中提取的图像特征映射,并使用基于神经网络的优化重建调整大小的图像。该新颖方法利用网络的层次编码,特别是其更深层的高电平辨别力,可以识别语义区域和物体,从而允许维持其纵横比。我们对深度特征的重建的使用导致不太明显的伪像,而不是使用图像空间调整运算符。我们评估我们在基准上的方法,将其与替代方法进行比较,并展示其对具有挑战性的图像的优势。

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