Generating Instance Segmentation Annotation by Geometry-guided GAN

01/26/2018
by   Wenqiang Xu, et al.
0

Instance segmentation is a problem of significance in computer vision. However, preparing annotated data for this task is extremely time-consuming and costly. By combining the advantages of 3D scanning, physical reasoning, and GAN techniques, we introduce a novel pipeline named Geometry-guided GAN (GeoGAN) to obtain large quantities of training samples with minor annotation. Our pipeline is well-suited to most indoor and some outdoor scenarios. To evaluate our performance, we build a new Instance-60K dataset, with various of common objects categories. Extensive experiments show that our pipeline can achieve decent instance segmentation performance given very low human annotation cost.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset