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Learning by expansion: Exploiting social media for image classification with few training examples

机译:扩展学习:利用社交媒体进行图像分类,几乎没有培训示例

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摘要

Witnessing the sheer amount of user-contributed photos and videos, we argue to leverage such freely available image collections as the training images for image classification. We propose an image expansion framework to mine more semantically related training images from the auxiliary image collection provided with very few training examples. The expansion is based on a semantic graph considering both visual and (noisy) textual similarities in the auxiliary image collections, where we also consider scalability issues (e.g., MapReduce) as constructing the graph. We found the expanded images not only reduce the time-consuming (manual) annotation efforts but also further improve the classification accuracy since more visually diverse training images are included. Experimenting in certain benchmarks, we show that the expanded training images improve image classification significantly. Furthermore, we achieve more than 27% relative improvement in accuracy compared to the state-of-the-art training image crowdsourcing approaches by exploiting media sharing services (such as Flickr) for additional training images.
机译:目睹大量用户提供的照片和视频,我们主张利用免费提供的图像集作为图像分类的训练图像。我们提出了一种图像扩展框架,以从辅助图像集中挖掘很少的训练示例来挖掘更多与语义相关的训练图像。扩展基于语义图,该语义图考虑了辅助图像集合中视觉和(嘈杂)文本的相似性,在此我们还考虑了可伸缩性问题(例如MapReduce)作为构建图的方式。我们发现扩展后的图像不仅减少了费时的(手动)注释工作,而且还因为包含了更多视觉多样化的训练图像而进一步提高了分类准确性。在某些基准测试中,我们表明扩展的训练图像可以显着改善图像分类。此外,与最新的培训图像众包方法相比,我们通过利用媒体共享服务(例如Flickr)获取其他培训图像,在准确性方面实现了27%以上的相对改进。

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