行人检测的概念感知集成系统

Helin Lin, Kyounghoon Kim, Kiyoung Choi
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引用次数: 1

摘要

对于ADAS中的行人检测,使用多个分类器通常比使用单个分类器在准确性方面表现更好,因为分类器可以相互补充。另一方面,这种行人检测器需要动态调整以适应现实环境的变化,如行人的不同姿势和背景的变化。因此,要求系统在保留旧信息的同时增量地接受新信息。提出了一种环境自适应集成系统,对行人检测进行增量学习。它结合了一个由多个分类器组成的行人检测器和一个前端概念识别器,该前端概念识别器根据输入图像的识别概念有选择地自适应地打开和关闭成员分类器。它采用一种增量学习算法,在现有的集成中增加一个新的分类器,该分类器由新增加的一批数据集训练而成。在前端概念识别器的介入下,系统既能保持对旧环境的良好识别精度,又不会失去对当前环境的关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concept-aware ensemble system for pedestrian detection
For pedestrian detection in ADAS, using multiple classifiers generally performs better than using a single classifier in terms of accuracy since the classifiers can be made to complement one another. On the other hand, such a pedestrian detector needs to be tuned dynamically to the variation of real-world environment such as different poses of pedestrians and variable background. Thus the system is requested to incrementally accept new information while retaining the old one. This paper presents an environment-adaptive ensemble system that performs incremental learning for pedestrian detection. It combines a pedestrian detector comprised of multiple classifiers with a front-end concept recognizer that selectively turns on and off the member classifiers adaptively according to the recognized concept of the input image. It adopts an incremental learning algorithm to add a new classifier, which is trained with a newly added batch of dataset, to the existing ensemble. With the intervention of the front-end concept recognizer, the system can retain good accuracy for old environments while not losing the focus on current environment.
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