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Image Segmentation Using Encoder-Decoder with Deformable Convolutions

机译:使用具有可变形卷曲的编码器 - 解码器的图像分割

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摘要

Image segmentation is an essential step in image analysis that brings meaning to the pixels in the image. Nevertheless, it is also a difficult task due to the lack of a general suited approach to this problem and the use of real-life pictures that can suffer from noise or object obstruction. This paper proposes an architecture for semantic segmentation using a convolutional neural network based on the Xception model, which was previously used for classification. Different experiments were made in order to find the best performances of the model (e.g., different resolution and depth of the network and data augmentation techniques were applied). Additionally, the network was improved by adding a deformable convolution module. The proposed architecture obtained a 76.8 mean IoU on the Pascal VOC 2012 dataset and 58.1 on the Cityscapes dataset. It outperforms SegNet and U-Net networks, both networks having considerably more parameters and also a higher inference time.
机译:图像分割是图像分析的重要步骤,其为图像中的像素带来意义。尽管如此,由于缺乏对这个问题的一般方法以及可能遭受噪声或物体障碍的现实寿命图片,这也是一项艰巨的任务。本文提出了一种基于Xcepion模型的卷积神经网络的语义分割架构,以前用于分类。进行不同的实验,以便找到模型的最佳性能(例如,应用了网络的不同分辨率和深度和数据增强技术)。另外,通过添加可变形的卷积模块来提高网络。拟议的架构在Pascal VOC 2012 DataSet上获得了76.8平均iou。CityScapes DataSet上的58.1。它优于SEGNET和U-Net网络,两个网络都具有相当多的参数以及更高的推理时间。

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