High performance sensor fusion architecture for vision-based occupant detection

Y. Owechko, N. Srinivasa, S. Medasani, R. Boscolo
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引用次数: 11

Abstract

We describe a fast and reliable vision system for detecting and recognizing occupants in automobiles. The main advantage of our system is its high accuracy due to the use of fusion module, which combines the results of multiple classifiers operating on different types of features (edges, scale, and range) from the same image. Another advantage is that since the same image sensor is used to generate the multiple feature types, cost is reduced. We utilize an active illumination strategy to provide adequate illumination car seat and shadow fill-in during both the night and day. Occupant position detection and recognition is performed on the actively illuminated image using the same algorithm under both night and day conditions. Our system can use images from commercially available CMOS vision sensors and thus very cost-effective and efficient for smart air bag applications in automobiles. We have successfully demonstrated this system operating in a test vehicle at real-time video rates (30 updates/sec) with high accuracies for a large variety of situations and lighting conditions.
基于视觉的乘员检测的高性能传感器融合架构
描述了一种快速、可靠的汽车乘员检测与识别视觉系统。该系统的主要优点是由于使用了融合模块,该模块将来自同一图像的多个分类器在不同类型的特征(边缘,尺度和范围)上操作的结果结合在一起,从而具有较高的准确性。另一个优点是,由于使用相同的图像传感器来生成多种特征类型,因此降低了成本。我们利用主动照明策略,在夜间和白天提供充足的照明汽车座椅和阴影填充。在夜间和白天条件下,使用相同的算法对主动照明图像进行乘员位置检测和识别。我们的系统可以使用市售CMOS视觉传感器的图像,因此非常经济高效地应用于汽车智能安全气囊。我们已经成功地演示了该系统在测试车辆上以实时视频速率(30更新/秒)运行,具有高精度,适用于各种情况和照明条件。
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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