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DiverseNet: When One Right Answer is not Enough

机译:DiverseNet:当一个正确答案还不够时

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Many structured prediction tasks in machine vision have a collection of acceptable answers, instead of one definitive ground truth answer. Segmentation of images, for example, is subject to human labeling bias. Similarly, there are multiple possible pixel values that could plausibly complete occluded image regions. State-of-the art supervised learning methods are typically optimized to make a single test-time prediction for each query, failing to find other modes in the output space. Existing methods that allow for sampling often sacrifice speed or accuracy. We introduce a simple method for training a neural network, which enables diverse structured predictions to be made for each test-time query. For a single input, we learn to predict a range of possible answers. We compare favorably to methods that seek diversity through an ensemble of networks. Such stochastic multiple choice learning faces mode collapse, where one or more ensemble members fail to receive any training signal. Our best performing solution can be deployed for various tasks, and just involves small modifications to the existing single-mode architecture, loss function, and training regime. We demonstrate that our method results in quantitative improvements across three challenging tasks: 2D image completion, 3D volume estimation, and flow prediction.
机译:机器视觉中的许多结构化预测任务都有一组可接受的答案,而不是一个确定的基础事实答案。例如,图像的分割容易受到人类标签偏见的影响。类似地,存在多个可能的像素值,可以合理地完成被遮挡的图像区域。通常对最先进的监督学习方法进行优化,以对每个查询进行单个测试时间预测,而无法在输出空间中找到其他模式。允许采样的现有方法通常会牺牲速度或准确性。我们介绍了一种用于训练神经网络的简单方法,该方法可以为每个测试时间查询做出各种结构化的预测。对于单个输入,我们将学习预测一系列可能的答案。与通过网络集成寻求多样性的方法相比,我们具有优势。这种随机的多选学习面模式崩溃,其中一个或多个集合成员无法接收任何训练信号。我们性能最好的解决方案可以部署到各种任务中,只需要对现有的单模体系结构,损失函数和训练方案进行少量修改。我们证明了我们的方法在以下三个具有挑战性的任务上实现了定量改进:2D图像完成,3D体积估计和流量预测。

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