On Rendering Synthetic Images for Training an Object Detector
We propose a novel approach to synthesizing images that are effective for training object detectors. Starting from a small set of real images, our algorithm estimates the rendering parameters required to synthesize similar images given a coarse 3D model of the target object. These parameters can then be reused to generate an unlimited number of training images of the object of interest in arbitrary 3D poses, which can then be used to increase classification performances. A key insight of our approach is that the synthetically generated images should be similar to real images, not in terms of image quality, but rather in terms of features used during the classifier training. We demonstrate the benefits of using such synthetically generated images in the context of drone detection, where limited amount of training data is available.
optimisation_drone.avi
openaccess
43.07 MB
AVI
d1362291e6eb8a23a0df01cefa5ce921
optimisation_plane.avi
openaccess
42.75 MB
AVI
72c3faf9ea6b718ec4eee456e789f514