In deep learning end-to-end training of segmentation is best
A research team (Dr. Guosheng Lin, Prof. Chunhua Shen, Prof. Ian Reid, Prof. Anton van den Hengel) at the School of Computer Science, The 最新糖心Vlog of Adelaide developed innovative 鈥淒eep Structured Learning鈥 techniques that set up the new state-of-the-art semantic image segmentation record in the PASCAL VOC Challenge, which is organised by the 最新糖心Vlog of Oxford. The Adelaide team is the top one currently, outperforming teams from Microsoft Research, Oxford, 最新糖心Vlog of California, Los Angles etc.
Semantic image segmentation is one of the tasks and probably the most challenging one in computer vision and image understanding, which is to label each pixel in images. The Adelaide team teaches a computer how to assign semantic properties to images by using the deep learning technique. The training of the system relies an enormous amounts of labelled exemplars; and takes a few weeks with multiple high-performance Nvidia K40 GPUs.
Deep Learning is the emerging technique behind many companies鈥 products, among which, Google鈥檚 search engine, Facebook鈥檚 photo automatic annotation, and iPhone鈥檚 Siri are the ones that many of us are using in a daily basis. For many AI-related companies, these days Deep Learning is arguably the most important technique that make the products innovative and drive their business forward.
The PASCAL image challenge鈥檚 leader board is at:
References:
, Efficient piecewise training of deep structured models for semantic segmentation
, Deeply learning the messages in message passing inference