© 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.For realistic and vivid colorization, generative priors have recently been exploited. However, such generative priors often fail for in-the-wild complex images due to their limited representation space. In this paper, we propose BigColor, a novel colorization approach that provides vivid colorization for diverse in-the-wild images with complex structures. While previous generative priors are trained to synthesize both image structures and colors, we learn a generative color prior to focus on color synthesis given the spatial structure of an image. In this way, we reduce the burden of synthesizing image structures from the generative prior and expand its represe...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...
Large-scale labeled datasets are generally necessary for successfully training a deep neural network...
International audienceThis paper aims to couple the powerful prediction of the convolutional neural ...
Automatic generation of 3D visual content is a fundamental problem that sits at the intersection of ...
Image colorization is an approach of transforming a black and white image into colorized image. The ...
This paper investigates into the colorization problem which converts a grayscale image to a colorful...
Image colorization is a challenging problem due to multi-modal uncertainty and high ill-posedness. D...
International audienceRecent colorization works implicitly predict the semantic information while le...
The color scheme plays an important role in different aspects of our everyday lives, such as web des...
We aim to color automatically greyscale images, without any manual intervention. The color propositi...
We aim to color greyscale images automatically, without any manual intervention. The color propositi...
We present a data-driven method for automatically recoloring a photo to enhance its appearance or ch...
This paper describes a method of improving the quality of the color in color images by colorizing th...
In this paper, we present an intuitive framework for clients to effectively colorize the regular pic...
In this paper, we present an interactive system for users to easily colorize the natural images of c...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...
Large-scale labeled datasets are generally necessary for successfully training a deep neural network...
International audienceThis paper aims to couple the powerful prediction of the convolutional neural ...
Automatic generation of 3D visual content is a fundamental problem that sits at the intersection of ...
Image colorization is an approach of transforming a black and white image into colorized image. The ...
This paper investigates into the colorization problem which converts a grayscale image to a colorful...
Image colorization is a challenging problem due to multi-modal uncertainty and high ill-posedness. D...
International audienceRecent colorization works implicitly predict the semantic information while le...
The color scheme plays an important role in different aspects of our everyday lives, such as web des...
We aim to color automatically greyscale images, without any manual intervention. The color propositi...
We aim to color greyscale images automatically, without any manual intervention. The color propositi...
We present a data-driven method for automatically recoloring a photo to enhance its appearance or ch...
This paper describes a method of improving the quality of the color in color images by colorizing th...
In this paper, we present an intuitive framework for clients to effectively colorize the regular pic...
In this paper, we present an interactive system for users to easily colorize the natural images of c...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...
Large-scale labeled datasets are generally necessary for successfully training a deep neural network...
International audienceThis paper aims to couple the powerful prediction of the convolutional neural ...