CVIVNov 5, 2021

Recognizing Vector Graphics without Rasterization

arXiv:2111.03281v325 citations
Originality Incremental advance
AI Analysis

This addresses the problem of leveraging structural information in vector graphics for computer vision tasks, offering a novel approach that is incremental in method but specific to this data format.

The paper tackles object localization and classification by directly processing vector graphics without rasterization, proposing YOLaT, which outperforms raster-based methods in average precision and efficiency.

In this paper, we consider a different data format for images: vector graphics. In contrast to raster graphics which are widely used in image recognition, vector graphics can be scaled up or down into any resolution without aliasing or information loss, due to the analytic representation of the primitives in the document. Furthermore, vector graphics are able to give extra structural information on how low-level elements group together to form high level shapes or structures. These merits of graphic vectors have not been fully leveraged in existing methods. To explore this data format, we target on the fundamental recognition tasks: object localization and classification. We propose an efficient CNN-free pipeline that does not render the graphic into pixels (i.e. rasterization), and takes textual document of the vector graphics as input, called YOLaT (You Only Look at Text). YOLaT builds multi-graphs to model the structural and spatial information in vector graphics, and a dual-stream graph neural network is proposed to detect objects from the graph. Our experiments show that by directly operating on vector graphics, YOLaT out-performs raster-graphic based object detection baselines in terms of both average precision and efficiency.

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