News: Research
Number one in the world in Visual Question Answering again, for now
Entries for the latest close on Monday morning, and we鈥檙e currently number one amongst the entries that have been submitted thus far.
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Another great CVPR result
The group had 11 CVPR papers accepted this year, which is another incredible result.
Number one in Semantic Segmentation
Congratulations to Zifeng Wu and Chunhua Shen on having made it to the top of the again.
Medical Machine Learning in The Conversation
We just had a piece on medical machine learning .
[Read more about Medical Machine Learning in The Conversation]
Number two in ImageNet Scene Parsing Challenge 2016
We鈥檝e had another great year in the ImageNet competition.
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A new Machine Learning result in Quantum Physics
John Bastian and Anton van den Hengel are among the authors of a just published in Nature Scientific Reports.
[Read more about A new Machine Learning result in Quantum Physics]
We're in the top 5 groups the world
The IEEE Conference on Computer Vision and Pattern Recognition (CVPR) is double blind reviewed (on full papers), and has the best citation rate in the field of computer vision and pattern recognition, according to the h5-index, a citation measure for the recent five years.
10 PAMIs and 28 CVPRs in just over a year
The AIML (formally ACVT) has had 10 journal articles published in IEEE Pattern Analysis and Machine Intelligence, and 28 papers in the IEEE Conference on Computer Vision and Pattern Recognition, in the 16 months since January 2015.
We beat Google at ImageNet Detection
The are out, and we did extremely well!
Great Imagenet detection results
Last week was the deadline for the ImageNet Large Scale Visual Recognition Challenge (ILSVRC 2015) large-scale object detection task. This is the primary challenge for image-based object detection. The challenge requires that you detect 200 classes of objects in a set of test images.