We introduce a new framework for manipulating and interacting with deep generative models that we call network bending. We present a comprehensive set of deterministic transformations that can be inserted as distinct layers into the computational graph of a trained generative neural network and applied during inference. In addition, we present a novel algorithm for analysing the deep generative model and clustering features based on their spatial activation maps. This allows features to be grouped together based on spatial similarity in an unsupervised fashion. This results in the meaningful manipulation of sets of features that correspond to the generation of a broad array of semantically significant features of the generated images. We outline this framework, demonstrating our results on state-of-the-art deep generative models trained on several image datasets. We show how it allows for the direct manipulation of semantically meaningful aspects of the generative process as well as allowing for a broad range of expressive outcomes.
翻译:我们引入了一种与深层基因模型进行操纵和互动的新框架,我们称之为网络弯曲。我们展示了一套全面的确定性变异,可以作为不同的层次插入经过训练的基因神经网络的计算图中,并在推断过程中应用。此外,我们还展示了一种基于空间激活图分析深层基因模型和集群特征的新算法。这样就可以根据空间相似性,以不受监督的方式将特征组合在一起。这导致对一系列特征进行有意义的操纵,这些特征与生成的图像产生一系列广泛的具有语义意义的特点相对应。我们勾画了这个框架,展示了我们在若干图像数据集培训的最先进的深层基因模型的结果。我们展示了它如何允许直接操纵基因变异过程的具有语义意义的方面,并允许广泛的表达结果。