Multiple instance fFeature for robust part-based object detection

Zhe L. Lin, G. Hua, L. Davis
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引用次数: 75

Abstract

Feature misalignment in object detection refers to the phenomenon that features which fire up in some positive detection windows do not fire up in other positive detection windows. Most often it is caused by pose variation and local part deformation. Previous work either totally ignores this issue, or naively performs a local exhaustive search to better position each feature. We propose a learning framework to mitigate this problem, where a boosting algorithm is performed to seed the position of the object part, and a multiple instance boosting algorithm further pursues an aggregated feature for this part, namely multiple instance feature. Unlike most previous boosting based object detectors, where each feature value produces a single classification result, the value of the proposed multiple instance feature is the Noisy-OR integration of a bag of classification results. Our approach is applied to the task of human detection and is tested on two popular benchmarks. The proposed approach brings significant improvement in performance, i.e., smaller number of features used in the cascade and better detection accuracy.
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多实例特征鲁棒的基于零件的目标检测
目标检测中的特征错位是指在某个正检测窗口中触发的特征在其他正检测窗口中没有触发的现象。最常见的原因是位姿变化和局部变形。以前的工作要么完全忽略了这个问题,要么天真地执行局部穷举搜索来更好地定位每个特征。我们提出了一个学习框架来缓解这一问题,其中执行增强算法来播种对象部分的位置,多实例增强算法进一步追求该部分的聚合特征,即多实例特征。与之前大多数基于增强的目标检测器不同,其中每个特征值产生单个分类结果,而所提出的多实例特征值是一组分类结果的noise - or集成。我们的方法应用于人类检测任务,并在两个流行的基准上进行了测试。该方法在性能上有了显著的提高,即级联中使用的特征数量更少,检测精度更高。
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