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Recurrent Segmentation for Variable Computational Budgets

机译:可变计算预算的递归细分

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State-of-the-art systems for semantic image segmentation use feed-forward pipelines with fixed computational costs. Building an image segmentation system that works across a range of computational budgets is challenging and time-intensive as new architectures must be designed and trained for every computational setting. To address this problem we develop a recurrent neural network that successively improves prediction quality with each iteration. Importantly, the RNN may be deployed across a range of computational budgets by merely running the model for a variable number of iterations. We find that this architecture is uniquely suited for efficiently segmenting videos. By exploiting the segmentation of past frames, the RNN can perform video segmentation at similar quality but reduced computational cost compared to state-of-the-art image segmentation methods. When applied to static images in the PASCAL VOC 2012 and Cityscapes segmentation datasets, the RNN traces out a speed-accuracy curve that saturates near the performance of state-of-the-art segmentation methods.
机译:用于语义图像分割的最新系统使用前馈流水线,且计算成本固定。建立一个可在各种计算预算范围内工作的图像分割系统既具有挑战性,又需要大量时间,因为必须针对每种计算设置设计和培训新的体系结构。为了解决这个问题,我们开发了一个递归神经网络,该神经网络在每次迭代中都会不断提高预测质量。重要的是,仅通过对模型运行可变数量的迭代,就可以在一系列计算预算中部署RNN。我们发现该体系结构特别适合于有效地分割视频。通过利用过去帧的分割,与最新的图像分割方法相比,RNN可以以相似的质量执行视频分割,但降低了计算成本。当应用于PASCAL VOC 2012和Cityscapes分割数据集中的静态图像时,RNN会找出一条速度精度曲线,其饱和度接近最新分割方法的性能。

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