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Institution

Facebook

CompanyTel Aviv, Israel
About: Facebook is a company organization based out in Tel Aviv, Israel. It is known for research contribution in the topics: Computer science & Artificial neural network. The organization has 7856 authors who have published 10906 publications receiving 570123 citations. The organization is also known as: facebook.com & FB.


Papers
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Journal ArticleDOI
TL;DR: This work presents a learning-based approach to representing dynamic objects inspired by the integral projection model used in tomographic imaging, and learns a latent representation of a dynamic scene that enables us to produce novel content sequences not seen during training.
Abstract: Modeling and rendering of dynamic scenes is challenging, as natural scenes often contain complex phenomena such as thin structures, evolving topology, translucency, scattering, occlusion, and biological motion. Mesh-based reconstruction and tracking often fail in these cases, and other approaches (e.g., light field video) typically rely on constrained viewing conditions, which limit interactivity. We circumvent these difficulties by presenting a learning-based approach to representing dynamic objects inspired by the integral projection model used in tomographic imaging. The approach is supervised directly from 2D images in a multi-view capture setting and does not require explicit reconstruction or tracking of the object. Our method has two primary components: an encoder-decoder network that transforms input images into a 3D volume representation, and a differentiable ray-marching operation that enables end-to-end training. By virtue of its 3D representation, our construction extrapolates better to novel viewpoints compared to screen-space rendering techniques. The encoder-decoder architecture learns a latent representation of a dynamic scene that enables us to produce novel content sequences not seen during training. To overcome memory limitations of voxel-based representations, we learn a dynamic irregular grid structure implemented with a warp field during ray-marching. This structure greatly improves the apparent resolution and reduces grid-like artifacts and jagged motion. Finally, we demonstrate how to incorporate surface-based representations into our volumetric-learning framework for applications where the highest resolution is required, using facial performance capture as a case in point.

333 citations

Posted Content
TL;DR: In this paper, representation regularization and hallucination techniques were proposed to improve the performance of low-shot visual learning, improving the one-shot accuracy by 2.3x on the ImageNet dataset.
Abstract: Low-shot visual learning---the ability to recognize novel object categories from very few examples---is a hallmark of human visual intelligence. Existing machine learning approaches fail to generalize in the same way. To make progress on this foundational problem, we present a low-shot learning benchmark on complex images that mimics challenges faced by recognition systems in the wild. We then propose a) representation regularization techniques, and b) techniques to hallucinate additional training examples for data-starved classes. Together, our methods improve the effectiveness of convolutional networks in low-shot learning, improving the one-shot accuracy on novel classes by 2.3x on the challenging ImageNet dataset.

332 citations

Proceedings Article
25 Apr 2012
TL;DR: PACMan, a caching service that coordinates access to the distributed caches that reduces average completion time of jobs, and improves efficiency of the cluster by 47% and 54%, respectively, on production workloads from Facebook and Microsoft Bing.
Abstract: Data-intensive analytics on large clusters is important for modern Internet services. As machines in these clusters have large memories, in-memory caching of inputs is an effective way to speed up these analytics jobs. The key challenge, however, is that these jobs run multiple tasks in parallel and a job is sped up only when inputs of all such parallel tasks are cached. Indeed, a single task whose input is not cached can slow down the entire job. To meet this "all-or-nothing" property, we have built PACMan, a caching service that coordinates access to the distributed caches. This coordination is essential to improve job completion times and cluster efficiency. To this end, we have implemented two cache replacement policies on top of PACMan's coordinated infrastructure fb-LIFE that minimizes average completion time by evicting large incomplete inputs, and LFU-F that maximizes cluster efficiency by evicting less frequently accessed inputs. Evaluations on production workloads from Facebook and Microsoft Bing show that PACMan reduces average completion time of jobs by 53% and 51% (small interactive jobs improve by 77%), and improves efficiency of the cluster by 47% and 54%, respectively.

331 citations

Proceedings Article
Armand Joulin1, Tomas Mikolov1
07 Dec 2015
TL;DR: The limitations of standard deep learning approaches are discussed and it is shown that some of these limitations can be overcome by learning how to grow the complexity of a model in a structured way.
Abstract: Despite the recent achievements in machine learning, we are still very far from achieving real artificial intelligence. In this paper, we discuss the limitations of standard deep learning approaches and show that some of these limitations can be overcome by learning how to grow the complexity of a model in a structured way. Specifically, we study the simplest sequence prediction problems that are beyond the scope of what is learnable with standard recurrent networks, algorithmically generated sequences which can only be learned by models which have the capacity to count and to memorize sequences. We show that some basic algorithms can be learned from sequential data using a recurrent network associated with a trainable memory.

327 citations

Patent
20 Aug 2008
TL;DR: In this article, a social networking website logs information about actions taken by members of the website and presents targeted ads based on actions by the member and one or more characteristics of the member.
Abstract: A social networking website logs information about actions taken by members of the website. For a particular member of the website, the website presents targeted ads based on actions by the member and one or more characteristics of the member. The social networking website maintains a profile associated with the member which describes characteristics of the member, such as age, geographic location, employment, educational history and interests. The social networking website compares the member profile to targeting criteria for a plurality of advertising requests and determines the advertising requests that match the member profile and generate the most revenue for the social networking website. When presenting a member with an ad, the website may optimize advertising revenue by selecting an ad from the received ads that will maximize the expected value of the ad.

323 citations


Authors

Showing all 7875 results

NameH-indexPapersCitations
Yoshua Bengio2021033420313
Xiang Zhang1541733117576
Jitendra Malik151493165087
Trevor Darrell148678181113
Christopher D. Manning138499147595
Robert W. Heath128104973171
Pieter Abbeel12658970911
Yann LeCun121369171211
Li Fei-Fei120420145574
Jon Kleinberg11744487865
Sergey Levine11565259769
Richard Szeliski11335972019
Sanjeev Kumar113132554386
Bruce Neal10856187213
Larry S. Davis10769349714
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20241
202237
20211,738
20202,017
20191,607
20181,229