基于改进YOLACT的室外环境大规模实例分割

Zichen Zhao, Xiliang Tong, Ying Sun, D. Bai, Xin Liu, Guojun Zhao, Hanwen Fan, Jun Li, Cejing Zou, Baojia Chen
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引用次数: 3

摘要

实例分割是一项具有挑战性的任务,需要实例级和像素级的预测,它在自动驾驶、视频分析、场景理解等领域有着广泛的应用。目前主流的实例分割方法具有良好的精度,但速度较慢,如果输入的是大尺度图像,处理速度就更不理想了。为了提高大尺度图像实例分割的效率和精度,本文在YOLACT网络的基础上对骨干网进行了改进,增加了多信息融合模块,提出了一种改进的BiFPN方法来实现多尺度特征融合,同时在一级检测器RetinaNet中增加了两个分支来实现实例分割。在cityscape数据集上对网络模型进行了测试,实验结果表明,本文改进的实例分割网络在保证分割速度的同时,提高了分割精度。与YOLACT相比,优化后的网络模型大小减少了17%,mAP、mAP50和mAP75分别提高了18.3%、32.1%和24.6%。
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Large scale instance segmentation of outdoor environment based on improved YOLACT
Instance segmentation is a challenging task that requires both instance‐level and pixel‐level prediction and it has a wide range of applications in autonomous driving, video analysis, scene understandingand so on. The currently dominant instance segmentation methods have excellent accuracy, but they are slow, and the processing speed will be even less satisfactory if the input is a large‐scale image. In order to improve the efficiency and accuracy of instance segmentation of large‐scale images, this article modifies the backbone network based on YOLACT network, adds a multi‐information fusion module and provides an improved BiFPN method to achieve multi‐scale feature fusion, while adding two branches to the first level detector RetinaNet to achieve instance segmentation. The network model is tested on Cityscapes dataset and the results of the experiments show that the improved instance segmentation network in this article improves the accuracy while ensuring the speed of segmentation. The optimized network model size was reduced by 17% compared to YOLACT, and the mAP, mAP50, and mAP75 were improved by 18.3%, 32.1%, and 24.6%, respectively.
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