论文标题
用多代理的深度加固学习进行半强
Halftoning with Multi-Agent Deep Reinforcement Learning
论文作者
论文摘要
深层神经网络最近使用具有高平行性的香草卷积层成功地完成了数字化力。但是,现有的深层方法无法产生具有令人满意的蓝色特性的半半体,并且需要复杂的训练方案。在本文中,我们提出了一种基于多代理深钢筋学习的半强化方法,称为Halftoners,该方法学习了共同的政策,以生成高质量的半半结构图像。具体而言,我们将每个二进制像素值的决定视为虚拟代理的动作,该策略由低变义的策略梯度培训。此外,蓝色噪声特性是通过新颖的各向异性抑制损耗函数来实现的。实验表明,我们的半强化方法会产生高质量的半身,同时保持速度相对较快。
Deep neural networks have recently succeeded in digital halftoning using vanilla convolutional layers with high parallelism. However, existing deep methods fail to generate halftones with a satisfying blue-noise property and require complex training schemes. In this paper, we propose a halftoning method based on multi-agent deep reinforcement learning, called HALFTONERS, which learns a shared policy to generate high-quality halftone images. Specifically, we view the decision of each binary pixel value as an action of a virtual agent, whose policy is trained by a low-variance policy gradient. Moreover, the blue-noise property is achieved by a novel anisotropy suppressing loss function. Experiments show that our halftoning method produces high-quality halftones while staying relatively fast.