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ROMIR: Robust Multi-View Image Re-Ranking

机译:ROMIR:稳健的多视图图像重新排列

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摘要

In multi-view re-ranking, multiple heterogeneous visual features are usually projected onto a low-dimensional subspace, and thus the resulting latent representation can be used for the subsequent similarity-based ranking. Albeit effective, this standard mechanism underplays the intrinsic structure underlying the latent subspace and does not take into account the substantial noise in the original spaces. In this paper, we propose a robust multi-view image re-ranking strategy. Due to the dramatic variability in image visual appearance, it is necessary to uncover the shared components underlying those query-related instances that are visually unlike for improving the re-ranking accuracy. Consequently, it is reasonable to assume the latent subspace enjoys the low-rank property and thus the subspace recovery can be achieved via the low-rank modeling accordingly. In addition, since the real-world data are usually partially contaminated, we employ $ell _{2, 1}$l2,1-norm based sparsity constraint to appropriately model the sample-specific mapping noise for enhancing the model robustness. In order to produce discriminative representations, we encode a similarity preserving term in our multi-view embedding framework. As a result, the sample separability is maximally maintained in the latent subspace with sufficient discriminative power. The extensive evaluations on public landmark benchmarks demonstrate the efficacy and superiority of the proposed method.
机译:在多视图重新排序中,通常将多个异构视觉特征投影到低维子空间上,因此,所得的潜在表示可用于后续基于相似度的排序。尽管有效,但是这种标准机制没有充分发挥潜在子空间的内在结构,并且没有考虑原始空间中的大量噪声。在本文中,我们提出了一种鲁棒的多视图图像重新排序策略。由于图像视觉外观的巨大变化,有必要发现那些与查询相关的实例下面的共享组件,这些共享组件在视觉上与提高重新排名的准确性不同。因此,可以合理地假设潜在子空间具有低秩属性,因此可以通过低秩建模相应地实现子空间恢复。另外,由于现实世界中的数据通常被部分污染,因此我们使用基于$ ell _ {2,1} $ l2,1-norm的稀疏性约束来对特定于样本的映射噪声进行适当建模,以增强模型的鲁棒性。为了产生区分性表示,我们在多视图嵌入框架中编码了一个相似性保留术语。结果,在潜在子空间中以足够的判别力最大程度地保持了样品的可分离性。对公共界标基准的广泛评估证明了该方法的有效性和优越性。

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