Densely Connected Feature Pyramid Network for Image Segmentation

Yuhang Jia, Jieqing Tan, Yan Xing, Peilin Hong, Li Zhang
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引用次数: 3

Abstract

Image segmentation is a specific image processing technique used to segment a picture into two or more semantic regions. This paper proposes a densely connected feature pyramid segmentation network and applies it to the segmentation of images in real driving scenarios. The feature pyramid network is a kind of feature extractor, which is originally used for object detection. This paper applies it to image segmentation tasks. The densely connected network is used as a part of feature pyramid network to extract features from bottom to top. Through the lateral connection, the features of the bottom-up part and the top-down part are merged. In the final merge stage, the extracted features are transformed to the same size through upsampling and then concatenated together, and finally the segmentation map is output. The experiment is conducted on the CamVid dataset, which is a dataset in actual driving scenarios. In the experiment, the generalization ability of the segmentation model is improved through data enhancement. Based on the densely connected feature pyramid segmentation network, the F1-score on the test set is 0.8895, and the IoU-score is 0.8209.
用于图像分割的密集连接特征金字塔网络
图像分割是一种特殊的图像处理技术,用于将图像分割成两个或多个语义区域。本文提出了一种密集连接的特征金字塔分割网络,并将其应用于真实驾驶场景下的图像分割。特征金字塔网络是一种特征提取器,最初用于目标检测。本文将其应用于图像分割任务。将密集连接的网络作为特征金字塔网络的一部分,从下往上提取特征。通过横向连接,融合了自底向上和自顶向下的特点。在最后的合并阶段,将提取的特征通过上采样转换为相同大小,然后拼接在一起,最后输出分割图。实验是在CamVid数据集上进行的,这是一个实际驾驶场景的数据集。在实验中,通过数据增强,提高了分割模型的泛化能力。基于密集连接的特征金字塔分割网络,测试集上的f1得分为0.8895,iou得分为0.8209。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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