A Bayesian hierarchical detection framework for parking space detection

Chingchun Huang, Sheng-Jyh Wang, Yao-Jen Chang, Tsuhan Chen
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引用次数: 32

Abstract

In this paper, a 3-layer Bayesian hierarchical detection framework (BHDF) is proposed for robust parking space detection. In practice, the challenges of the parking space detection problem come from luminance variations, inter- occlusions among cars, and occlusions caused by environmental obstacles. Instead of determining the status of parking spaces one by one, the proposed BHDF framework models the inter-occluded patterns as semantic knowledge and couple local classifiers with adjacency constraints to determine the status of parking spaces in a row-by-row manner. By applying the BHDF to the parking space detection problem, the available parking spaces and the labeling of parked cars can be achieved in a robust and efficient manner. Furthermore, this BHDF framework is generic enough to be used for various kinds of detection and segmentation applications.
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车位检测的贝叶斯分层检测框架
本文提出了一种三层贝叶斯分层检测框架(BHDF),用于鲁棒车位检测。在实践中,停车位检测问题的挑战来自于亮度变化、车辆间的遮挡以及环境障碍物引起的遮挡。提出的BHDF框架不是逐个确定车位的状态,而是将互遮挡模式建模为语义知识,并将局部分类器与邻接约束耦合,以逐行确定车位的状态。将BHDF应用于车位检测问题,可以鲁棒高效地实现可用车位和停放车辆的标注。此外,这个BHDF框架足够通用,可以用于各种类型的检测和分割应用程序。
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