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Pixel-Wise Attentional Gating for Scene Parsing

机译:用于场景解析的像素明智注意力选通

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To achieve dynamic inference in pixel labeling tasks, we propose Pixel-wise Attentional Gating (PAG), which learns to selectively process a subset of spatial locations at each layer of a deep convolutional network. PAG is a generic, architecture-independent, problem-agnostic mechanism that can be readily “plugged in” to an existing model with fine-tuning. We utilize PAG in two ways: 1) learning spatially varying pooling fields that improve model performance without the extra computation cost associated with multi-scale pooling, and 2) learning a dynamic computation policy for each pixel to decrease total computation (FLOPs) while maintaining accuracy. We extensively evaluate PAG on a variety of per-pixel labeling tasks, including semantic segmentation, boundary detection, monocular depth and surface normal estimation. We demonstrate that PAG allows competitive or state-of-the-art performance on these tasks. Our experiments show that PAG learns dynamic spatial allocation of computation over the input image which provides better performance trade-offs compared to related approaches (e.g., truncating deep models or dynamically skipping whole layers). Generally, we observe PAG can reduce computation by 10% without noticeable loss in accuracy and performance degrades gracefully when imposing stronger computational constraints.
机译:为了在像素标记任务中实现动态推断,我们提出了像素级注意门控(PAG),该方法可选择性地处理深度卷积网络每一层的空间位置子集。 PAG是一种通用的,与体系结构无关的,与问题无关的机制,可以通过微调轻松地“插入”到现有模型中。我们以两种方式利用PAG:1)学习空间变化的池域,以改善模型性能而无需多尺度池相关的额外计算成本; 2)学习每个像素的动态计算策略,以减少总计算量(FLOP),同时保持准确性。我们在各种像素标记任务上广泛评估了PAG,包括语义分割,边界检测,单眼深度和表面法线估计。我们证明了PAG在这些任务上可以提供具有竞争力的技术或最先进的性能。我们的实验表明,PAG学习了输入图像上计算的动态空间分配,与相关方法(例如,截断深层模型或动态跳过整个图层)相比,它可以提供更好的性能折衷。通常,我们观察到PAG可以减少10%的计算量,而没有明显的准确性损失,并且在施加更强的计算约束时性能会优雅地下降。

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