Statistical context priming for object detection

A. Torralba, P. Sinha
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引用次数: 205

Abstract

There is general consensus that context can be a rich source of information about an object's identity, location and scale. However the issue of how to formalize centextual influences is still largely open. Here we introduce a simple probabilistic framework for modeling the relationship between context and object properties. We represent global context information in terms of the spatial layout of spectral components. The resulting scheme serves as an effective procedure for context driven focus of attention and scale-selection on real-world scenes. Based on a simple holistic analysis of an image, the scheme is able to accurately predict object locations and sizes.
用于对象检测的统计上下文启动
人们普遍认为,环境可以是关于物体身份、位置和规模的丰富信息来源。然而,如何将文本影响正式化的问题在很大程度上仍然是开放的。在这里,我们引入一个简单的概率框架来建模上下文和对象属性之间的关系。我们根据光谱分量的空间布局来表示全局上下文信息。由此产生的方案可以作为一个有效的程序,用于语境驱动的关注焦点和现实场景的尺度选择。基于对图像的简单整体分析,该方案能够准确预测物体的位置和大小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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