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Modern discriminative predictors have been shown to match natural intelligences in specific perceptual tasks in image classification, object and part detection, boundary extraction, etc. However, a major advantage that natural intelligences still have is that they work well for all perceptual problems together, solving them efficiently and coherently in an integrated manner. In order to capture some of these advantages in machine perception, we ask two questions: whether deep neural networks can learn universal image representations, useful not only for a single task but for all of them, and how the solutions to the different tasks can be integrated in this framework. We answer by proposing a new architecture, which we call multinet, in which not only deep image features are shared between tasks, but where tasks can interact in a recurrent manner by encoding the results of their analysis in a common shared representation of the data. In this manner, we show that the performance of individual tasks in standard benchmarks can be improved first by sharing features between them and then, more significantly, by integrating their solutions in the common representation.
Author Information
Hakan Bilen (University of Oxford)
Andrea Vedaldi (Facebook AI Research and University of Oxford)
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2022 : Direct LiDAR-based object detector training from automated 2D detections »
Robert McCraith · Eldar Insafutdinov · Lukas Neumann · Andrea Vedaldi -
2022 Poster: Unsupervised Multi-Object Segmentation by Predicting Probable Motion Patterns »
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2020 Poster: Quantifying Learnability and Describability of Visual Concepts Emerging in Representation Learning »
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2020 Poster: RELATE: Physically Plausible Multi-Object Scene Synthesis Using Structured Latent Spaces »
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2019 Poster: Fixing the train-test resolution discrepancy »
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2018 Poster: Gather-Excite: Exploiting Feature Context in Convolutional Neural Networks »
Jie Hu · Li Shen · Samuel Albanie · Gang Sun · Andrea Vedaldi -
2018 Poster: Modelling and unsupervised learning of symmetric deformable object categories »
James Thewlis · Hakan Bilen · Andrea Vedaldi -
2018 Poster: Unsupervised Learning of Object Landmarks through Conditional Image Generation »
Tomas Jakab · Ankush Gupta · Hakan Bilen · Andrea Vedaldi -
2017 Workshop: Interpreting, Explaining and Visualizing Deep Learning - Now what ? »
Klaus-Robert Müller · Andrea Vedaldi · Lars K Hansen · Wojciech Samek · Grégoire Montavon -
2017 Poster: Learning multiple visual domains with residual adapters »
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2017 Spotlight: Learning multiple visual domains with residual adapters »
Sylvestre-Alvise Rebuffi · Hakan Bilen · Andrea Vedaldi -
2017 Poster: Unsupervised learning of object frames by dense equivariant image labelling »
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2017 Oral: Unsupervised learning of object frames by dense equivariant image labelling »
James Thewlis · Hakan Bilen · Andrea Vedaldi -
2016 Poster: Learning feed-forward one-shot learners »
Luca Bertinetto · João Henriques · Jack Valmadre · Philip Torr · Andrea Vedaldi -
2013 Poster: Deep Fisher Networks for Large-Scale Image Classification »
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2013 Spotlight: Deep Fisher Networks for Large-Scale Image Classification »
Karen Simonyan · Andrea Vedaldi · Andrew Zisserman -
2011 Poster: Pylon Model for Semantic Segmentation »
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2010 Poster: Simultaneous Object Detection and Ranking with Weak Supervision »
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2009 Poster: Structured output regression for detection with partial truncation »
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2006 Poster: A Rate-Distortion Approach to Joint Pattern Alignment »
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