仅使用任务描述进行对象检测

Yangyang Sun, Wenjie Chen, Chen Chen
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引用次数: 0

摘要

深度卷积神经网络模型在目标检测方面实现了最先进的性能,但它是由大型标记数据集驱动的。对于一般的实际目标检测问题,现有的公共数据集已经不再适用,也没有现成的数据集来解决问题,通常只有对目标检测任务的描述。从现实世界中收集数据集的方法非常耗时,并且在某些特殊情况下无法实现。本文将该问题定义为一种新的目标检测问题——任务描述目标检测,并提出了一种基于合成图像的方法来解决该问题。根据任务描述,设计了一个快速、低成本地生成带注释合成图像的系统。此外,我们还提出了一种新的目标检测网络层SOMConv,使用合成数据集训练的目标检测模型适应于现实世界中的检测。我们的实验证明了我们的方法在现实世界的目标检测问题上的有效性,只有目标检测问题的描述,没有真实的图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Detection with Task Description Only
Deep Convolutional Neural Network models achieve state-of-the-art performance on object detection, but it is driven by large labeled data sets. For general practical object detection problems, the existing public data set is no longer applicable, and there is no ready-made data set to solve the problem, usually only the description of object detection task is available. The method of collecting data sets from real world is really time consuming and unreachable in some special scenarios. In this paper, we define this problem as a new object detection problem named Task Description Object Detection, and present a synthetic image-based method to solve this problem. We design a system to generate annotated synthetic images quickly and inexpensively according to the task description. What's more, we propose a novel layer called SOMConv for object detection network to adapt the object detection model trained with the synthetic data sets to detection in real world. Our experiments evidence the effectiveness of our approach on real-world object detection problems, which only has the description of the object detection problem and no real images.
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