基于注意力的金字塔聚合网络视觉位置识别

Yingying Zhu, Jiong Wang, Lingxi Xie, Liang Zheng
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引用次数: 65

摘要

视觉位置识别在城市环境中具有挑战性,通常被视为一项大规模的图像检索任务。地点识别的内在挑战在于,在复杂的城市场景中,汽车、树木等令人困惑的物体经常出现,结构重复的建筑物可能导致计数过多和突发性问题,降低了图像的表征。为了解决这些问题,我们提出了一个基于注意力的金字塔聚合网络(APANet),该网络以端到端方式进行位置识别训练。APANet的一个主要组成部分是空间金字塔池,它可以有效地对包含地理信息的多尺度建筑进行编码。另一种是采用注意块作为区域评价器,用于抑制混淆的区域特征,突出区分的区域特征。在测试时,我们进一步提出了一种简单而有效的PCA功率美白策略,通过合理限制重复计数的影响,显着提高了广泛使用的PCA美白。实验评估表明,该方法在两个位置识别基准上优于现有方法,并且在标准图像检索数据集上具有良好的泛化性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention-based Pyramid Aggregation Network for Visual Place Recognition
Visual place recognition is challenging in the urban environment and is usually viewed as a large scale image retrieval task. The intrinsic challenges in place recognition exist that the confusing objects such as cars and trees frequently occur in the complex urban scene, and buildings with repetitive structures may cause over-counting and the burstiness problem degrading the image representations. To address these problems, we present an Attention-based Pyramid Aggregation Network (APANet), which is trained in an end-to-end manner for place recognition. One main component of APANet, the spatial pyramid pooling, can effectively encode the multi-size buildings containing geo-information. The other one, the attention block, is adopted as a region evaluator for suppressing the confusing regional features while highlighting the discriminative ones. When testing, we further propose a simple yet effective PCA power whitening strategy, which significantly improves the widely used PCA whitening by reasonably limiting the impact of over-counting. Experimental evaluations demonstrate that the proposed APANet outperforms the state-of-the-art methods on two place recognition benchmarks, and generalizes well on standard image retrieval datasets.
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