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Research on Human-Machine Collaborative Annotation for Traffic Scene Data

机译:交通场景数据的人机协同标注研究

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Computer vision model using deep learning requires a lot of high-quality data for training. However, obtaining amounts of well-annotated data is too expensive. The state-of-the-art automatic annotation tools can accurately detect and segment a few objects. We bring together the annotation tools and the crowed engineering into a framework for object detection and instance-level segmentation. The input of model are the image need to annotate and the annotation constraints: precision, utility and cost. The output of the model are the set of detected objects and the set of instance-level segmentation results. The model can integrate the computer vision annotation model with manual annotation model. We validate human-machine collaborative annotation model on the Cityscapes dataset.
机译:使用深度学习的计算机视觉模型需要大量高质量的数据进行训练。但是,获得大量注释良好的数据太昂贵了。最新的自动注释工具可以准确地检测和分割一些对象。我们将注释工具和拥挤的工程技术整合到一个框架中,以进行对象检测和实例级分段。模型的输入是需要注释的图像和注释约束:精度,实用性和成本。模型的输出是一组检测到的对象和一组实例级别的分割结果。该模型可以将计算机视觉注释模型与手动注释模型集成在一起。我们在Cityscapes数据集上验证了人机协作注释模型。

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