scispace - formally typeset
Search or ask a question
Institution

Amazon.com

CompanySeattle, Washington, United States
About: Amazon.com is a company organization based out in Seattle, Washington, United States. It is known for research contribution in the topics: Service (business) & Service provider. The organization has 13363 authors who have published 17317 publications receiving 266589 citations.


Papers
More filters
Journal ArticleDOI
TL;DR: In this paper, the authors proposed four strategies that can reduce deforestation, while increasing production and social wellbeing in the legal Amazon, by eliminating land grabbing and land speculation through designation of public forests.

109 citations

Journal ArticleDOI
TL;DR: This paper synthesizes novel viewpoints across a wide range of viewing directions (covering a 60° cone) from a sparse set of just six viewing directions, based on a deep convolutional network trained to directly synthesize new views from the six input views.
Abstract: The goal of light transport acquisition is to take images from a sparse set of lighting and viewing directions, and combine them to enable arbitrary relighting with changing view. While relighting from sparse images has received significant attention, there has been relatively less progress on view synthesis from a sparse set of "photometric" images---images captured under controlled conditions, lit by a single directional source; we use a spherical gantry to position the camera on a sphere surrounding the object. In this paper, we synthesize novel viewpoints across a wide range of viewing directions (covering a 60° cone) from a sparse set of just six viewing directions. While our approach relates to previous view synthesis and image-based rendering techniques, those methods are usually restricted to much smaller baselines, and are captured under environment illumination. At our baselines, input images have few correspondences and large occlusions; however we benefit from structured photometric images. Our method is based on a deep convolutional network trained to directly synthesize new views from the six input views. This network combines 3D convolutions on a plane sweep volume with a novel per-view per-depth plane attention map prediction network to effectively aggregate multi-view appearance. We train our network with a large-scale synthetic dataset of 1000 scenes with complex geometry and material properties. In practice, it is able to synthesize novel viewpoints for captured real data and reproduces complex appearance effects like occlusions, view-dependent specularities and hard shadows. Moreover, the method can also be combined with previous relighting techniques to enable changing both lighting and view, and applied to computer vision problems like multiview stereo from sparse image sets.

109 citations

Patent
14 Jun 2007
TL;DR: In this article, a list of one or more electronic items stored in memory of the user device may be displayed, and a status of index generation for the electronic item stored in the memory of a device may also be presented.
Abstract: Electronic items may be searched using search indices. Search indices may be generated for electronic items at a user device. In that case, a list of one or more electronic items stored in memory of the user device may be displayed, and a status of index generation for the electronic items stored in memory of the device may be presented.

109 citations

Patent
14 Feb 2012
TL;DR: In this article, a system and method for monitoring the performance associated with fulfilling resource requests is presented, where one or more client computing devices obtain an original resource request and associate a record identifier with the original resource requests.
Abstract: A system and method for monitoring the performance associated with fulfilling resource requests are provided. One or more client computing devices obtain an original resource request and associate a record identifier with the original resource request. The one or more client computing devices also determine performance data associated with processing each embedded resource request included in a response to the original resource request. Each embedded resource request is associated with a component record identifier that is associated with, but different from, the record identifier of the original resource request. The one or more client computing devices can then transmit the determined performance data with the record identifier to another processing device.

109 citations

Posted Content
TL;DR: In this article, the authors propose a method to provide vectorial representations of visual classification tasks which can be used to reason about the nature of those tasks and their relations, and demonstrate that this method is capable of predicting task similarities that match our intuition about semantic and taxonomic relations between different visual tasks.
Abstract: We introduce a method to provide vectorial representations of visual classification tasks which can be used to reason about the nature of those tasks and their relations. Given a dataset with ground-truth labels and a loss function defined over those labels, we process images through a "probe network" and compute an embedding based on estimates of the Fisher information matrix associated with the probe network parameters. This provides a fixed-dimensional embedding of the task that is independent of details such as the number of classes and does not require any understanding of the class label semantics. We demonstrate that this embedding is capable of predicting task similarities that match our intuition about semantic and taxonomic relations between different visual tasks (e.g., tasks based on classifying different types of plants are similar) We also demonstrate the practical value of this framework for the meta-task of selecting a pre-trained feature extractor for a new task. We present a simple meta-learning framework for learning a metric on embeddings that is capable of predicting which feature extractors will perform well. Selecting a feature extractor with task embedding obtains a performance close to the best available feature extractor, while costing substantially less than exhaustively training and evaluating on all available feature extractors.

109 citations


Authors

Showing all 13498 results

NameH-indexPapersCitations
Jiawei Han1681233143427
Bernhard Schölkopf1481092149492
Christos Faloutsos12778977746
Alexander J. Smola122434110222
Rama Chellappa120103162865
William F. Laurance11847056464
Andrew McCallum11347278240
Michael J. Black11242951810
David Heckerman10948362668
Larry S. Davis10769349714
Chris M. Wood10279543076
Pietro Perona10241494870
Guido W. Imbens9735264430
W. Bruce Croft9742639918
Chunhua Shen9368137468
Network Information
Related Institutions (5)
Microsoft
86.9K papers, 4.1M citations

89% related

Google
39.8K papers, 2.1M citations

88% related

Carnegie Mellon University
104.3K papers, 5.9M citations

87% related

ETH Zurich
122.4K papers, 5.1M citations

82% related

University of Maryland, College Park
155.9K papers, 7.2M citations

82% related

Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20234
2022168
20212,015
20202,596
20192,002
20181,189