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Oncel Tuzel

Researcher at Apple Inc.

Publications -  168
Citations -  17841

Oncel Tuzel is an academic researcher from Apple Inc.. The author has contributed to research in topics: Pixel & Computer science. The author has an hindex of 42, co-authored 153 publications receiving 14665 citations. Previous affiliations of Oncel Tuzel include Mitsubishi Electric & Mitsubishi.

Papers
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Proceedings ArticleDOI

VoxelNet: End-to-End Learning for Point Cloud Based 3D Object Detection

TL;DR: Zhou et al. as mentioned in this paper propose VoxelNet, a generic 3D detection network that unifies feature extraction and bounding box prediction into a single stage, end-to-end trainable deep network.
Proceedings ArticleDOI

Learning from Simulated and Unsupervised Images through Adversarial Training

TL;DR: SimGAN as mentioned in this paper uses an adversarial network similar to Generative Adversarial Networks (GANs), but with synthetic images as inputs instead of random vectors, and achieves state-of-the-art results on the MPIIGaze dataset without any labeled real data.
Proceedings Article

Coupled Generative Adversarial Networks

TL;DR: This work proposes coupled generative adversarial network (CoGAN), which can learn a joint distribution without any tuple of corresponding images, and applies it to several joint distribution learning tasks, and demonstrates its applications to domain adaptation and image transformation.
Book ChapterDOI

Region covariance: a fast descriptor for detection and classification

TL;DR: A fast method for computation of covariances based on integral images, and the performance of the covariance features is superior to other methods, as it is shown, and large rotations and illumination changes are also absorbed by the covariances matrix.
Posted Content

Learning from Simulated and Unsupervised Images through Adversarial Training

TL;DR: This work develops a method for S+U learning that uses an adversarial network similar to Generative Adversarial Networks (GANs), but with synthetic images as inputs instead of random vectors, and makes several key modifications to the standard GAN algorithm to preserve annotations, avoid artifacts, and stabilize training.