南京大学计算机软件新技术国家重点实验室
摘 要:
Deep convolutional features have now been widely applied to image
retrieval and demonstrated excellent performance. Given an image database, the
deep features of images are usually extracted by the model pre-trained on a
large-scale benchmark dataset and used for retrieval. Nevertheless, the image
database on which the retrieval is conducted could be from a domain different
from that of the benchmark dataset. How to adapt these pre-trained deep
features to a given image database becomes an issue. In particular, the
unsupervised nature of image retrieval makes this issue challenging.
This talk will report our recent work on addressing the above issue
through utilising diffusion process. By considering the underlying distribution
of the images in a database, diffusion process can better evaluate image
similarity and improve retrieval. We propose to treat diffusion process as a
“black box” and directly model it by deep neural networks, so as to obtain the
image representation that assimilates the effect of diffusion process and are
therefore better adapted to the given image database. The proposed approach is
fully unsupervised in the sense that it needs neither image labels nor external
datasets. The adapted deep features directly work with Euclidean search and
completely avoids online diffusion process in retrieval. Via experimental study,
we will show its effectiveness and investigate its appealing characteristics
such as the generalisation to new image insertion. Also, the potential
extension to this work will be discussed.
报告人简介:
Lei Wang received his PhD degree from Nanyang Technological
University, Singapore. He is now Associate Professor at School of Computing and
Information Technology of University of Wollongong, Australia. His research
interests include machine learning, pattern recognition, and computer vision.
Lei Wang has published 150+ peer-reviewed papers, including those in highly
regarded journals and conferences such as IEEE TPAMI, IJCV, CVPR, ICCV and
ECCV, etc. He was awarded the Early Career Researcher Award by Australian
Academy of Science and Australian Research Council. He served as the General
Co-Chair of DICTA 2014, Program Co-Chair of VCIP2019, Area Chair of ICIP2019,
and on the Technical Program Committees of 20+ international conferences and
workshops. Lei Wang is senior member of IEEE.
时间:9月30日 10:00-11:00
地点:计算机科学技术楼230室
|