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 line 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 detector training. We show in the context of drone, plane, and car detection that using su...
Currently, the best object detection results are achieved by supervised deep learning methods, howev...
In most image classification systems, the amount and quality of the training samples used to represe...
Datadriven machine learning approaches have made computer vision solutions more robust and easily a...
A picture is worth a thousand words, or if you want it labeled, it’s worth about four cents per boun...
Machine learning has become one of the most widely used techniques in artificial intelligence, espec...
The capabilities of object detection are well known, but many projects don’t use them, despite poten...
\u91The development of autonomous cars is in full progress. For the autonomous cars to be able to de...
\u91The development of autonomous cars is in full progress. For the autonomous cars to be able to de...
Limited training data is one of the biggest challenges in the industrial application of deep learnin...
Deep learning approaches have made great strides in pattern recognition due to their superior perfor...
Over the last years, Convolutional Neural Networks have been extensively used for solving problems s...
In most image classification systems, the amount and quality of the training samples used to represe...
In most image classification systems, the amount and quality of the training samples used to represe...
In most image classification systems, the amount and quality of the training samples used to represe...
In most image classification systems, the amount and quality of the training samples used to represe...
Currently, the best object detection results are achieved by supervised deep learning methods, howev...
In most image classification systems, the amount and quality of the training samples used to represe...
Datadriven machine learning approaches have made computer vision solutions more robust and easily a...
A picture is worth a thousand words, or if you want it labeled, it’s worth about four cents per boun...
Machine learning has become one of the most widely used techniques in artificial intelligence, espec...
The capabilities of object detection are well known, but many projects don’t use them, despite poten...
\u91The development of autonomous cars is in full progress. For the autonomous cars to be able to de...
\u91The development of autonomous cars is in full progress. For the autonomous cars to be able to de...
Limited training data is one of the biggest challenges in the industrial application of deep learnin...
Deep learning approaches have made great strides in pattern recognition due to their superior perfor...
Over the last years, Convolutional Neural Networks have been extensively used for solving problems s...
In most image classification systems, the amount and quality of the training samples used to represe...
In most image classification systems, the amount and quality of the training samples used to represe...
In most image classification systems, the amount and quality of the training samples used to represe...
In most image classification systems, the amount and quality of the training samples used to represe...
Currently, the best object detection results are achieved by supervised deep learning methods, howev...
In most image classification systems, the amount and quality of the training samples used to represe...
Datadriven machine learning approaches have made computer vision solutions more robust and easily a...