This project aims at creating deep architectures inspired by cognitive sciences to under visual scenes either in images or videos. The characteristic of the proposed architecture is that it simplifies the inference using biological plausible marginals (object type and spatial location), which can be learned in an unsupervised way directly from data (i.e. without labels).
Tag: Scene Understanding
M5-M Low Resolution and Quality Image Understanding
The goals of this project are (1) to make new end to end image processing pipeline that performs the extremely low light image denoising and enhancement task and (2) to develop a recognition friendly super resolution method for low resolution image recognition.