Projects
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A framework for adversarial unsupervised domain adaptation. |
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Clockwork Convnets for Video Semantic Segmentation |
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A method to hallucinate mid-level activations for a missing modality at test time. |
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We propose a method for pre-training a deep network for a new imaging modality which lacks sufficient supervised training data. |
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We propose a technique to adapt CNN based object detectors trained on RGB images to effectively leverage depth images at test time to boost detection performance. |
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Introduces two new ecological datasets for domain adaptation for quantification. |
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We introduce a domain confusion and softlabel loss to simultaneously learn a visual representation which is both discriminative and renders the domains indistinguishable. |
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We propose a multi-class spatial regularization method based on adaptive affinity propagation clustering which simultaneously optimizes across all categories and all proposed locations in the image to improve both location and categorization of selected detection proposals. |
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We propose a model that simultaneously trains a representation and detectors for categories with either image-level or bounding-box localized labels present. We provide a novel formulation of a joint multiple instance learning method that combines the heterogenous data sources. |
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Released >7.5K detector! We present a method to transform classifiers into detectors by transferring knowledge from known detector categories. |
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We propose a method for adapting to unlabeled data over time by modeling a continuosly evolving domain. |
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We propose a method for quickly training detectors for novel categories on in-situ image data. |
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We propose a new feature based on deep convolutional neural networks and show improvement over state-of-the-art visual feature representations. |
Judy Hoffman, Erik Rodner, Jeff Donahue, Brian Kulis, Kate Saenko International Journal of Computer Vision, Special Domain Adaptation Addition, 2013. bibtex |
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We learn a category invariant feature transformation, which maps target points into the source domain such that they corrected classified by the source classifier. |
By using instance constraints, available through tracking or other methods, we can improve unsupervised domain adaptation performance. |
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We learn to separate large heterogeneous data sources into multiple latent visual domains and show that using this learned clustering improves classification performance. |
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We learn segment level video classification using videos with only weakly labeled tag information. |
We present a method for multi-source adaptation with latent source domains. See ECCV2012 paper for more details. |
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