Artistic style transfer aims to modify the style of the image while
preserving its content. Style transfer using deep learning models has been
widely studied since 2015, and most of the applications are focused on specific
artists like Van Gogh, Monet, Cezanne. There are few researches and
applications on traditional Chinese painting style transfer. In this paper, we
will study and leverage different state-of-the-art deep generative models for
Chinese painting style transfer and evaluate the performance both qualitatively
and quantitatively. In addition, we propose our own algorithm that combines
several style transfer models for our task. Specifically, we will transfer two
main types of traditional Chinese painting style, known as "Gong-bi" and
"Shui-mo" (to modern images like nature objects, portraits and landscapes.Comment: Paper is too old (written in 2019