小型手持物体识别测试(SHORT)

Jose Rivera-Rubio, Saad Idrees, I. Alexiou, Lucas Hadjilucas, A. Bharath
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引用次数: 13

摘要

拥有高质量摄像头和快速网络连接的智能手机无处不在,这将催生许多新的应用。其中之一是视觉物体识别,这是一项新兴的智能手机功能,可以在商业街购物、价格比较和类似用途中发挥作用。这种技术在辅助应用中也有潜在的作用,比如对有视力障碍的人。我们介绍了小型手持物体识别测试(SHORT),这是一个新的数据集,旨在测试从使用手持或可穿戴相机获取的快照或视频中识别手持物体的算法的性能。我们表明,SHORT提供了一组图像和基础事实,有助于评估影响识别性能的许多因素。SHORT的设计重点是辅助系统上下文,尽管它可以提供关于手持物体识别性能更一般方面的有用信息。我们描述了数据集的当前状态,该数据集由一小组高质量的训练图像和一组近13.5万张智能手机捕获的30种杂货产品的测试图像组成。在这个版本中,SHORT解决了传统数据集未涵盖的另一个上下文,其中高质量目录图像与可变质量用户捕获的图像进行比较;这使得SHORT中的匹配比其他数据集更具挑战性。类似质量的图像通常不存在于“数据库”和“查询”数据集中,这种情况在商业应用中越来越多地遇到。最后,我们比较了不同复杂程度的流行物体识别算法在SHORT测试时的结果,并讨论了从用户持有的物体中识别视觉物体的特殊性所带来的研究挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Small Hand-held Object Recognition Test (SHORT)
The ubiquity of smartphones with high quality cameras and fast network connections will spawn many new applications. One of these is visual object recognition, an emerging smartphone feature which could play roles in high-street shopping, price comparisons and similar uses. There are also potential roles for such technology in assistive applications, such as for people who have visual impairment. We introduce the Small Hand-held Object Recognition Test (SHORT), a new dataset that aims to benchmark the performance of algorithms for recognising hand-held objects from either snapshots or videos acquired using hand-held or wearable cameras. We show that SHORT provides a set of images and ground truth that help assess the many factors that affect recognition performance. SHORT is designed to be focused on the assistive systems context, though it can provide useful information on more general aspects of recognition performance for hand-held objects. We describe the present state of the dataset, comprised of a small set of high quality training images and a large set of nearly 135,000 smartphone-captured test images of 30 grocery products. In this version, SHORT addresses another context not covered by traditional datasets, in which high quality catalogue images are being compared with variable quality user-captured images; this makes the matching more challenging in SHORT than other datasets. Images of similar quality are often not present in “database” and “query” datasets, a situation being increasingly encountered in commercial applications. Finally, we compare the results of popular object recognition algorithms of different levels of complexity when tested against SHORT and discuss the research challenges arising from the particularities of visual object recognition from objects that are being held by users.
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