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Method for Implementing a High-Level Image Representation for Image Analysis

机译:用于图像分析的高级图像表示方法

摘要

Robust low-level image features have been proven to be effective representations for a variety of visual recognition tasks such as object recognition and scene classification; but pixels, or even local image patches, carry little semantic meanings. For high-level visual tasks, such low-level image representations are potentially not enough. The present invention provides a high-level image representation where an image is represented as a scale-invariant response map of a large number of pre-trained generic object detectors, blind to the testing dataset or visual task. Leveraging on this representation, superior performances on high-level visual recognition tasks are achieved with relatively classifiers such as logistic regression and linear SVM classifiers.
机译:强大的低级图像功能已被证明是各种视觉识别任务(例如对象识别和场景分类)的有效表示;但是像素甚至本地图像补丁几乎没有语义含义。对于高级视觉任务,这样的低级图像表示可能不够。本发明提供了高级图像表示,其中图像被表示为对测试数据集或视觉任务不知情的大量预训练的通用对象检测器的尺度不变响应图。利用这种表示方法,可以通过相对分类器(例如逻辑回归和线性SVM分类器)在高级视觉识别任务上实现出色的性能。

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