Arbitrary neural style transfer aims to render a content image in a randomly given artistic style using the features extracted from a well-trained convolutional neural network. Existing style transfer algorithms have demonstrated astonishing results. However, the generated images suffer from loss of content details, non-uniform stroke patterns, and limited diversity. In this paper, we focus on improving the diversity of the stylized images. We propose a light-weighted yet efficient method named style permutation (SP) to tackle the limitation of the diversity without harming the original style information. The core of our style permutation algorithm is to multiply the deep image feature maps by a permutation matrix. Compared with state-of-the-art diversified style transfer methods, our style permutation algorithm offers more flexibility. Also, we present qualitative and quantitative analysis and theory explanations of the effectiveness of our proposed method. Experimental results show that our proposed method could generate diverse outputs for arbitrary styles when integrated into both WCT (whitening and coloring transform)-based methods and AdaIN (adaptive instance normalization)-based methods.
The Anti-Japanese Amalgamated Army songs in Mudanjiang River Basin were created in the context of the Anti-Japanese War. In this paper, the contents of the Anti-Japanese Amalgamated Army songs in the Mudanjiang River Basin are analyzed and the forms of expression are explored by using computer-aided technology to reveal the characteristics of the motivating contents of the Anti-Japanese Amalgamated Army songs in Mudanjiang River Basin as well as the popularity and nationality of the creative styles.
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