基于动态锚框架的交通道路检测

Xingya Yan, Yujiao Ding, Yue Li
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引用次数: 0

摘要

近年来,深度卷积神经网络在目标检测方面取得了很大的进展。一般来说,包围盒和包围盒的类型在目标检测中起着非常重要的作用。然而,卷积神经网络不容易直接生成无序边界框。一种广泛使用的解决方案是采用分而治之的思想,引入锚盒的概念。目前,锚框架机制在顶层目标检测框架中得到了广泛的应用,并在常见数据集上取得了良好的效果。本文的创新之处在于提出了一种新的锚帧生成方法,该方法可以为目标检测帧生成不同纵横比的误差帧。与以往锚盒的预定义生成方式不同,该方法中的锚盒是由锚盒生成器动态生成的。其特点是锚盒生成器不是固定的,而是从固定规则定义的锚盒中学习,这意味着锚盒生成器可以适应各种场景。本文采用动力锚架法对交通道路进行检测。此外,锚盒生成器的权重由一个输入为预定义锚盒的小网络来预测。与传统的锚框架生成方法相比,本文提出的锚框架生成器具有以下创新:(1)自适应调整锚框架的尺寸和纵横比,以提高锚框架的质量。(2)自适应IOU国家值用于平衡大小目标的阳性样本数量。最后,取得了良好的效率和效果。
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Traffic Road Detection Based on Dynamic Anchor Frame
In recent years, deep convolution neural networks have made great progress in object detection tasks. Generally speaking, the bounding box and the type of bounding box play a very important role in object detection. However, it is not easy for convolution neural networks to directly generate disordered bounding boxes. A widely used solution is to adopt the idea of divide and conquer and introduce the concept of anchor box. At present, anchor frame mechanism has been widely used in top-level object detection framework, and has achieved good results on common datasets. The innovation of this paper is that a novel anchor frame generation method is proposed, which can generate error frames with various aspect ratios for object detection frames. Different from the previous method of generating the anchor box in a predefined way, the anchor box in this method is dynamically generated by the anchor box generator. The feature is that the anchor box generator is not fixed, but learns from anchor boxes defined by fixed rules, which means that the anchor box generator can be adapted to a variety of scenarios. In this paper, the dynamic anchor frame method is used to detect the traffic road. In addition, the weights of the anchor box generator are predicted by a small network whose inputs are predefined anchor boxes. Compared with the traditional anchor frame generation methods, the proposed anchor frame generator has the following innovations: (1) it adaptive adjusts the size and aspect ratio of the anchor frame to improve the quality of the anchor frame. (2) The adaptive IOU country value is used to balance the number of positive samples of the size target. Finally, good efficiency and results are obtained.
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