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Robust and efficient post-processing for video object detection

机译:用于视频对象检测的强大和高效的后处理

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Object recognition in video is an important task for plenty of applications, including autonomous driving perception, surveillance tasks, wearable devices or IoT networks. Object recognition using video data is more challenging than using still images due to blur, occlusions or rare object poses. Specific video detectors with high computational cost or standard image detectors together with a fast post-processing algorithm achieve the current state-of-the-art. This work introduces a novel post-processing pipeline that overcomes some of the limitations of previous post-processing methods by introducing a learning-based similarity evaluation between detections across frames. Our method improves the results of stat-of-the-art specific video detectors, specially regarding fast moving objects, and presents low resource requirements. And applied to efficient still image detectors, such as YOLO, provides comparable results to much more computationally intensive detectors.
机译:视频中的对象识别是大量应用的重要任务,包括自动驾驶感知,监控任务,可穿戴设备或物联网网络。使用视频数据的对象识别比使用模糊,闭塞或稀有对象姿势的静止图像更具挑战性。具有高计算成本或标准图像探测器的特定视频检测器与快速后处理算法一起实现了当前最先进的。这项工作介绍了一种新的后处理管道,通过在跨帧的检测之间引入基于学习的相似性评估来克服先前后处理方法的一些局限性。我们的方法改进了专门的现实特定视频探测器的结果,特别是在快速移动物体上,并提出了低资源要求。并应用于有效的静止图像探测器,例如YOLO,提供了比较更多的计算密集型探测器的可比结果。

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