基于特征轨迹转移的场景位置一次性学习

R. Kwitt, S. Hegenbart, M. Niethammer
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引用次数: 45

摘要

(室外)场景的外观随着某些短暂属性的强度而发生很大变化,例如“下雨”、“黑暗”或“阳光明媚”。显然,这也会影响图像在特征空间中的表示,例如在某个CNN层上的激活,从而影响场景识别性能。在这项工作中,我们研究了这些瞬态属性的可变性,作为研究图像表示如何作为属性强度的函数而变化的丰富信息来源。特别是,我们利用最近引入的带有细粒度注释的数据集来估计瞬态属性集合的特征轨迹,然后展示如何将这些轨迹转移到新的图像表示中。这使我们能够根据瞬态属性所跨越的空间的维度,沿传递轨迹合成新的数据。该概念在场景位置一次性识别问题上的适用性得到了验证。我们表明,通过特征轨迹转移合成的数据大大提高了识别性能,(1)相对于基线,(2)与最先进的一次性学习方法相结合。
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One-Shot Learning of Scene Locations via Feature Trajectory Transfer
The appearance of (outdoor) scenes changes considerably with the strength of certain transient attributes, such as "rainy", "dark" or "sunny". Obviously, this also affects the representation of an image in feature space, e.g., as activations at a certain CNN layer, and consequently impacts scene recognition performance. In this work, we investigate the variability in these transient attributes as a rich source of information for studying how image representations change as a function of attribute strength. In particular, we leverage a recently introduced dataset with fine-grain annotations to estimate feature trajectories for a collection of transient attributes and then show how these trajectories can be transferred to new image representations. This enables us to synthesize new data along the transferred trajectories with respect to the dimensions of the space spanned by the transient attributes. Applicability of this concept is demonstrated on the problem of oneshot recognition of scene locations. We show that data synthesized via feature trajectory transfer considerably boosts recognition performance, (1) with respect to baselines and (2) in combination with state-of-the-art approaches in oneshot learning.
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