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Featured researches published by Timnit Gebru.


international conference on pattern recognition | 2014

Learning Features and Parts for Fine-Grained Recognition

Jonathan Krause; Timnit Gebru; Jia Deng; Li-Jia Li; Li Fei-Fei

This paper addresses the problem of fine-grained recognition: recognizing subordinate categories such as bird species, car models, or dog breeds. We focus on two major challenges: learning expressive appearance descriptors and localizing discriminative parts. To this end, we propose an object representation that detects important parts and describes fine grained appearances. The part detectors are learned in a fully unsupervised manner, based on the insight that images with similar poses can be automatically discovered for fine-grained classes in the same domain. The appearance descriptors are learned using a convolutional neural network. Our approach requires only image level class labels, without any use of part annotations or segmentation masks, which may be costly to obtain. We show experimentally that combining these two insights is an effective strategy for fine-grained recognition.


Proceedings of the National Academy of Sciences of the United States of America | 2017

Using deep learning and Google Street View to estimate the demographic makeup of neighborhoods across the United States

Timnit Gebru; Jonathan Krause; Yilun Wang; Duyun Chen; Jia Deng; Erez Lieberman Aiden; Li Fei-Fei

Significance We show that socioeconomic attributes such as income, race, education, and voting patterns can be inferred from cars detected in Google Street View images using deep learning. Our model works by discovering associations between cars and people. For example, if the number of sedans in a city is higher than the number of pickup trucks, that city is likely to vote for a Democrat in the next presidential election (88% chance); if not, then the city is likely to vote for a Republican (82% chance). The United States spends more than


human factors in computing systems | 2017

Scalable Annotation of Fine-Grained Categories Without Experts

Timnit Gebru; Jonathan Krause; Jia Deng; Li Fei-Fei

250 million each year on the American Community Survey (ACS), a labor-intensive door-to-door study that measures statistics relating to race, gender, education, occupation, unemployment, and other demographic factors. Although a comprehensive source of data, the lag between demographic changes and their appearance in the ACS can exceed several years. As digital imagery becomes ubiquitous and machine vision techniques improve, automated data analysis may become an increasingly practical supplement to the ACS. Here, we present a method that estimates socioeconomic characteristics of regions spanning 200 US cities by using 50 million images of street scenes gathered with Google Street View cars. Using deep learning-based computer vision techniques, we determined the make, model, and year of all motor vehicles encountered in particular neighborhoods. Data from this census of motor vehicles, which enumerated 22 million automobiles in total (8% of all automobiles in the United States), were used to accurately estimate income, race, education, and voting patterns at the zip code and precinct level. (The average US precinct contains ∼1,000 people.) The resulting associations are surprisingly simple and powerful. For instance, if the number of sedans encountered during a drive through a city is higher than the number of pickup trucks, the city is likely to vote for a Democrat during the next presidential election (88% chance); otherwise, it is likely to vote Republican (82%). Our results suggest that automated systems for monitoring demographics may effectively complement labor-intensive approaches, with the potential to measure demographics with fine spatial resolution, in close to real time.


international conference on computer vision | 2017

Fine-Grained Recognition in the Wild: A Multi-task Domain Adaptation Approach

Timnit Gebru; Judy Hoffman; Li Fei-Fei

We present a crowdsourcing workflow to collect image annotations for visually similar synthetic categories without requiring experts. In animals, there is a direct link between taxonomy and visual similarity: e.g. a collie (type of dog) looks more similar to other collies (e.g. smooth collie) than a greyhound (another type of dog). However, in synthetic categories such as cars, objects with similar taxonomy can have very different appearance: e.g. a 2011 Ford F-150 Supercrew-HD looks the same as a 2011 Ford F-150 Supercrew-LL but very different from a 2011 Ford F-150 Supercrew-SVT. We introduce a graph based crowdsourcing algorithm to automatically group visually indistinguishable objects together. Using our workflow, we label 712,430 images by ~1,000 Amazon Mechanical Turk workers; resulting in the largest fine-grained visual dataset reported to date with 2,657 categories of cars annotated at 1/20th the cost of hiring experts.


Conference on Fairness, Accountability and Transparency | 2018

Gender Shades: Intersectional Accuracy Disparities in Commercial Gender Classification.

Joy Buolamwini; Timnit Gebru


arXiv: Computer Vision and Pattern Recognition | 2017

Using Deep Learning and Google Street View to Estimate the Demographic Makeup of the US.

Timnit Gebru; Jonathan Krause; Yilun Wang; Duyun Chen; Jia Deng; Erez Aiden Lieberman; Li Fei-Fei


national conference on artificial intelligence | 2017

Fine-grained car detection for visual census estimation

Timnit Gebru; Jonathan Krause; Yilun Wang; Duyun Chen; Jia Deng; Fei Fei Li


Archive | 2017

Drivers of Variability in Energy Consumption

Adrian Albert; Timnit Gebru; Jerome Ku; Jungsuk Kwac; Jure Leskovec; Ram Rajagopal


arXiv: Databases | 2018

Datasheets for Datasets.

Timnit Gebru; Jamie Morgenstern; Briana Vecchione; Jennifer Wortman Vaughan; Hanna M. Wallach; Hal Daumé; Kate Crawford


Archive | 2017

Scalable Annotation of Fine-Grained Objects Without Experts

Timnit Gebru; Jonathan Krause; Jia Deng; Li Fei-Fei

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Jia Deng

University of Michigan

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