基于文本数据的视角场景识别改进

Volkmar Frinken, Yutaro Iwakiri, R. Ishida, Kensho Fujisaki, S. Uchida
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引用次数: 3

摘要

以目前的技术进步和社会接受程度来看,用不了多久,持续记录用户视野的可穿戴设备就会普及。我们介绍了一个新的数据库的图像序列,采取了第一人称视角相机,现实的,日常场景。作为一个显著特征,我们手动转录了每个图像的场景文本。通过这种方式,可以模拟复杂的OCR算法,帮助识别位置和活动。为了验证这一假设,我们使用视觉特征、文本特征以及两者的组合进行了一系列实验。我们证明,虽然单独考虑时不是很强大,但文本信息提高了整体识别率。
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Improving Point of View Scene Recognition by Considering Textual Data
At the current rate of technological advancement and social acceptance thereof, it will not be long before wearable devices will be common that constantly record the field of view of the user. We introduce a new database of image sequences, taken with a first person view camera, of realistic, everyday scenes. As a distinguishing feature, we manually transcribed the scene text of each image. This way, sophisticated OCR algorithms can be simulated that can help in the recognition of the location and the activity. To test this hypothesis, we performed a set of experiments using visual features, textual features, and a combination of both. We demonstrate that, although not very powerful when considered alone, the textual information improves the overall recognition rates.
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