Generalized feature learning and indexing for object localization and recognition

Ning Zhou, A. Angelova, Jianping Fan
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Abstract

This paper addresses a general feature indexing and retrieval scenario in which a set of features detected in the image can retrieve a relevant class of objects, or classes of objects. The main idea behind those features for general object retrieval is that they are capable of identifying and localizing some small regions or parts of the potential object. We propose a set of criteria which take advantage of the learned features to find regions in the image which likely belong to an object. We further use the features' localization capability to localize the full object of interest and its extents. The proposed approach improves the recognition performance and is very efficient. Moreover, it has the potential to be used in automatic image understanding or annotation since it can uncover regions where the objects can be found in an image.
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目标定位与识别的广义特征学习与索引
本文解决了一个通用的特征索引和检索场景,在该场景中,在图像中检测到的一组特征可以检索相关的一类或几类对象。用于一般对象检索的这些特征背后的主要思想是,它们能够识别和定位潜在对象的一些小区域或部分。我们提出了一套标准,利用学习到的特征来寻找图像中可能属于物体的区域。我们进一步使用功能的定位能力来定位感兴趣的整个对象及其范围。该方法提高了识别性能,效率很高。此外,它还具有用于自动图像理解或注释的潜力,因为它可以发现图像中可以找到对象的区域。
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