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首页> 外文期刊>Journal of visual communication & image representation >Image compression optimized for 3D reconstruction by utilizing deep neural networks
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Image compression optimized for 3D reconstruction by utilizing deep neural networks

机译:利用深神经网络进行3D重建优化的图像压缩

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摘要

Computer vision tasks are often expected to be executed on compressed images. Classical image compression standards like JPEG 2000 are widely used. However, they do not account for the specific end-task at hand. Motivated by works on recurrent neural network (RNN)-based image compression and three-dimensional (3D) reconstruction, we propose unified network architectures to solve both tasks jointly. These joint models provide image compression tailored for the specific task of 3D reconstruction. Images compressed by our proposed models, yield 3D reconstruction performance superior as compared to using JPEG 2000 compression. Our models significantly extend the range of compression rates for which 3D reconstruction is possible. We also show that this can be done highly efficiently at almost no additional cost to obtain compression on top of the computation already required for performing the 3D reconstruction task.
机译:计算机愿望任务通常预计将在压缩图像上执行。 像JPEG 2000这样的经典图像压缩标准被广泛使用。 但是,他们不考虑手头的特定结束任务。 基于经常性神经网络(RNN)的图像压缩和三维(3D)重建的功能,我们提出了统一的网络架构来共同解决两个任务。 这些联合模型为3D重建的特定任务提供了图像压缩。 与使用JPEG 2000压缩相比,通过我们提出的模型压缩的图像,从而产生3D重建性能。 我们的模型显着扩展了3D重建的压缩速率范围。 我们还表明,这可以高效地完成,几乎没有额外的成本,以获得在执行3D重建任务所需的计算顶部的压缩。

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