Graphic sketch representations are effective for representing sketches. Existing methods take the patches cropped from sketches as the graph nodes, and construct the edges based on sketch's drawing order or Euclidean distances on the canvas. However, the drawing order of a sketch may not be unique, while the patches from semantically related parts of a sketch may be far away from each other on the canvas. In this paper, we propose an order-invariant, semantics-aware method for graphic sketch representations. The cropped sketch patches are linked according to their global semantics or local geometric shapes, namely the synonymous proximity, by computing the cosine similarity between the captured patch embeddings. Such constructed edges are l...
This paper aims to solve the task of coloring a sketch image given a ready-colored exemplar image. C...
To see is to sketch - free-hand sketching naturally builds ties between human and machine vision. In...
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...
In this paper, we study the problem of multi-view sketch correspondence, where we take as input mult...
In this paper, we tackle for the first time, the problem of self-supervised representation learning ...
Humans effortlessly grasp the connection between sketches and real-world objects, even when these sk...
In this paper, we focus on learning semantic representations for large-scale highly abstract sketche...
To perceive and create a whole from parts is a prime trait of the human visual system. In this paper...
Sketching is a simple and efficient way for humans to express their perceptions of the world. Sketch...
We study the problem of sketch image recognition. This problem is plagued with two major challenges:...
We propose a new sketch recognition framework that combines a rich representation of low level visua...
Sketch recognition aims to automatically classify human hand sketches of objects into known categori...
Categorizing free-hand human sketches has profound implications in applications such as human comput...
As the popularity of touch-screen devices, understanding a user's hand-drawn sketch has become an in...
Sketches are often used by humans to quickly give information about places or illustrate how to find...
This paper aims to solve the task of coloring a sketch image given a ready-colored exemplar image. C...
To see is to sketch - free-hand sketching naturally builds ties between human and machine vision. In...
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...
In this paper, we study the problem of multi-view sketch correspondence, where we take as input mult...
In this paper, we tackle for the first time, the problem of self-supervised representation learning ...
Humans effortlessly grasp the connection between sketches and real-world objects, even when these sk...
In this paper, we focus on learning semantic representations for large-scale highly abstract sketche...
To perceive and create a whole from parts is a prime trait of the human visual system. In this paper...
Sketching is a simple and efficient way for humans to express their perceptions of the world. Sketch...
We study the problem of sketch image recognition. This problem is plagued with two major challenges:...
We propose a new sketch recognition framework that combines a rich representation of low level visua...
Sketch recognition aims to automatically classify human hand sketches of objects into known categori...
Categorizing free-hand human sketches has profound implications in applications such as human comput...
As the popularity of touch-screen devices, understanding a user's hand-drawn sketch has become an in...
Sketches are often used by humans to quickly give information about places or illustrate how to find...
This paper aims to solve the task of coloring a sketch image given a ready-colored exemplar image. C...
To see is to sketch - free-hand sketching naturally builds ties between human and machine vision. In...
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...