Mirrors can degrade the performance of computer vision models, however to accurately detect mirrors in images remains challenging. YOLOv4 achieves phenomenal results both in object detection accuracy and speed, nevertheless the model often fails in detecting mirrors. In this paper, a novel mirror detection method `Mirror-YOLO' is proposed, which mainly targets on mirror detection. Based on YOLOv4, the proposed model embeds an attention mechanism for better feature acquisition, and a hypercolumn-stairstep approach for feature map fusion. Mirror-YOLO can also produce accurate bounding polygons for instance segmentation. The effectiveness of our proposed model is demonstrated by our experiments, compared to the existing mirror detection methods, the proposed Mirror-YOLO achieves better performance in detection accuracy on the mirror image dataset.
翻译:镜像可以降低计算机视觉模型的性能,但为了准确地探测图像中的镜像,仍然具有挑战性。YOLOv4在物体探测准确性和速度方面都取得了惊人的结果,尽管该模型在探测镜像方面常常失败。在本文中,提出了一种新的镜像探测方法“Miroror-YOLO ”,主要以镜像探测为目标。根据YOLOv4, 拟议的模型嵌入了一个关注机制,以获取更好的特征,以及一个超克隆-楼梯方法,用于地貌图聚合。镜像-YOLO还可以产生精确的捆绑多边形,例如分块。我们提出的模型的有效性通过我们的实验得到证明,与现有的镜像探测方法相比,拟议的镜像-YOLO在探测镜像数据集的精确性能方面得到了更好的表现。