Colorizing black and white photos and movies enhances the old versions, and make them more interesting to see. Therefore, we became interested in image colorization, which plays an essential role in the field of computer vision. Recently, deep learning techniques for image colorization have progressed remarkably. In this study, colorization is carried out using a novel deep learning model for vivid coloring. The model consists of two components: Pix2Pix as a generative adversarial network (GAN), and the multi-layer perceptron (MLP) of a denoiser. The Pix2Pix primarily generates the color image for a given grayscale image as input, and the MLP transforms the colored image into a vivid color image by filtering out noise. In our experiments, the grayscale images used as input images were images of natural objects and artifacts. We observed that the predicted images provided as output images were more neatly colored through the proposed method.