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Retrieving landmark and non-landmark images from community photo collections

机译:从社区照片集中检索地标和非地标图像

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摘要

State of the art data mining and image retrieval in community photo collections typically focus on popular subsets, e.g. images containing landmarks or associated to Wikipedia articles. We propose an image clustering scheme that, seen as vector quantization compresses a large corpus of images by grouping visually consistent ones while providing a guaranteed distortion bound. This allows us, for instance, to represent the visual content of all thousands of images depicting the Parthenon in just a few dozens of scene maps and still be able to retrieve any single, isolated, non-landmark image like a house or graffiti on a wall. Starting from a geo-tagged dataset, we first group images geographically and then visually, where each visual cluster is assumed to depict different views of the the same scene. We align all views to one reference image and construct a 2D scene map by preserving details from all images while discarding repeating visual features. Our indexing, retrieval and spatial matching scheme then operates directly on scene maps. We evaluate the precision of the proposed method on a challenging one-million urban image dataset. © 2010 ACM.
机译:社区照片集中的最新数据挖掘和图像检索通常集中在流行的子集上,例如包含地标或与Wikipedia文章相关的图像。我们提出了一种图像聚类方案,该方案被视为向量量化,通过对视觉上一致的图像进行分组来压缩大图像集,同时提供有保证的失真范围。例如,这使我们能够在几十个场景图中代表描绘帕特农神庙的所有数千个图像的视觉内容,并且仍然能够检索任何单个,孤立的非地标图像,例如房屋或街道上的涂鸦。壁。从带有地理标签的数据集开始,我们首先在地理上对图像进行分组,然后在视觉上进行分组,其中假定每个视觉集群都描绘同一场景的不同视图。我们将所有视图与一幅参考图像对齐,并通过保留所有图像的细节,同时丢弃重复的视觉特征来构建2D场景图。然后,我们的索引,检索和空间匹配方案直接在场景地图上运行。我们在具有挑战性的一百万个城市图像数据集上评估该方法的精度。 ©2010 ACM。

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