While most existing segmentation methods usually combined the powerful feature extraction capabilities of CNNs with Conditional Random Fields (CRFs) post-processing, the result always limited by the fault of CRFs . Due to the notoriously slow calculation speeds and poor efficiency of CRFs, in recent years, CRFs post-processing has been gradually eliminated. In this paper, an improved Generative Adversarial Networks (GANs) for image semantic segmentation task (semantic segmentation by GANs, Seg-GAN) is proposed to facilitate further segmentation research. In addition, we introduce Convolutional CRFs (ConvCRFs) as an effective improvement solution for the image semantic segmentation task. Towards the goal of differentiating the segmentation results from the ground truth distribution and improving the details of the output images, the proposed discriminator network is specially designed in a full convolutional manner combined with cascaded ConvCRFs. Besides, the adversarial loss aggressively encourages the output image to be close to the distribution of the ground truth. Our method not only learns an end-to-end mapping from input image to corresponding output image, but also learns a loss function to train this mapping. The experiments show that our method achieves better performance than state-of-the-art methods.
翻译:虽然大多数现有分解方法通常将CNN的强大特征提取能力与有条件随机场(CRFs)的后处理合并在一起,但结果总是受通用报告格式的过错所限制。由于计算速度明显缓慢和通用报告格式效率低的臭名昭著,近年来,通用报告格式后处理方法已逐渐消失。在本文件中,为图像分解任务(由GANs、Seg-GANs的分解)而改进的GANAD Aversarial网络(GANs)被提议促进进一步的分解研究。此外,我们采用Convolution CRFs(CRCRFs)作为图像分解任务的有效改进解决方案。为了将分解结果与地面真实分布和改进输出图像细节区分开来,拟议的导师网络是特别以全面进化的方式设计的,与CURCRFs的分解任务(由GANs、Seg-GAN-GANs)相结合。此外,对抗性损失鼓励输出图像接近于地面的分布。我们的方法不仅从最终到图像的绘制方法学习了从我们输入到结果的方法,而且还学习了从输入到结果的计算方法。