Color-Based Free-Space Segmentation Using Online Disparity-Supervised Learning

Willem P. Sanberg, Gijs Dubbelman, P. D. With
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引用次数: 17

Abstract

This work contributes to vision processing for Advanced Driver Assist Systems (ADAS) and intelligent vehicle applications. We propose a color-only stixel segmentation framework to segment traffic scenes into free, drivable space and obstacles, which has a reduced latency to improve the real-time processing capabilities. Our system learns color appearance models for free-space and obstacle classes in an online and self-supervised fashion. To this end, it applies a disparity-based segmentation, which can run in the background of the critical system path, either with a time delay of several frames or at a frame rate that is only a third of that of the color-based algorithm. In parallel, the most recent video frame is analyzed solely with these learned color appearance models, without an actual disparity estimate and the corresponding latency. This translates into a reduced response time from data acquisition to data analysis, which is a critical property for high-speed ADAS. Our evaluation on two publicly available datasets, one of which we introduce as part of this work, shows that the color-only analysis can achieve similar or even better results in difficult imaging conditions, compared to the disparity-only method. Our system improves the quality of the free-space analysis, while simultaneously lowering the latency and the computational load.
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使用在线差分监督学习的基于颜色的自由空间分割
这项工作有助于高级驾驶辅助系统(ADAS)和智能车辆应用的视觉处理。我们提出了一种纯彩色像素分割框架,将交通场景分割为自由、可驾驶空间和障碍物,减少了延迟,提高了实时处理能力。我们的系统以在线和自我监督的方式学习自由空间和障碍类的颜色外观模型。为此,它应用了基于差异的分割,该分割可以在关键系统路径的后台运行,或者具有几帧的时间延迟,或者帧率仅为基于颜色的算法的三分之一。同时,最新的视频帧仅用这些学习到的颜色外观模型进行分析,没有实际的视差估计和相应的延迟。这意味着从数据采集到数据分析的响应时间缩短,这是高速ADAS的关键特性。我们对两个公开可用的数据集进行了评估,其中一个是我们作为本工作的一部分介绍的,结果表明,与仅限差异的方法相比,仅限颜色的分析可以在困难的成像条件下获得相似甚至更好的结果。我们的系统提高了自由空间分析的质量,同时降低了延迟和计算负荷。
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