Incremental learning of object detectors using a visual shape alphabet

A. Opelt, A. Pinz, Andrew Zisserman
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引用次数: 206

Abstract

We address the problem of multiclass object detection. Our aims are to enable models for new categories to benefit from the detectors built previously for other categories, and for the complexity of the multiclass system to grow sublinearly with the number of categories. To this end we introduce a visual alphabet representation which can be learnt incrementally, and explicitly shares boundary fragments (contours) and spatial configurations (relation to centroid) across object categories. We develop a learning algorithm with the following novel contributions: (i) AdaBoost is adapted to learn jointly, based on shape features; (ii) a new learning schedule enables incremental additions of new categories; and (iii) the algorithm learns to detect objects (instead of categorizing images). Furthermore, we show that category similarities can be predicted from the alphabet. We obtain excellent experimental results on a variety of complex categories over several visual aspects. We show that the sharing of shape features not only reduces the number of features required per category, but also often improves recognition performance, as compared to individual detectors which are trained on a per-class basis.
使用视觉形状字母的目标检测器的增量学习
我们解决了多类目标的检测问题。我们的目标是使新类别的模型受益于先前为其他类别构建的检测器,并使多类别系统的复杂性随着类别数量的次线性增长。为此,我们引入了一种可以增量学习的视觉字母表表示,并明确地跨对象类别共享边界片段(轮廓)和空间配置(与质心的关系)。我们开发了一种具有以下新颖贡献的学习算法:(i) AdaBoost适应于基于形状特征的联合学习;(ii)新的学习时间表可以增加新类别;(3)算法学习检测物体(而不是对图像进行分类)。此外,我们表明类别相似性可以从字母表预测。我们在多个视觉方面对各种复杂类别获得了很好的实验结果。我们表明,与在每个类的基础上训练的单个检测器相比,形状特征的共享不仅减少了每个类别所需的特征数量,而且经常提高识别性能。
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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