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                  Dr. Xinbo Gao's Research

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                  ::
                  Research::

                  As the name suggests, VIPs Lab focuses on the theoretical research and system development of video and image (visual information) processing (perception) based on the machine learning and deep neural networks. In addition, we also do some research on communications, especially the networking and Transmission on the high attitude platform. The detailed research topics include machine learning, heterogeneous image reconstruction or synthesis, image quality assessment, intelligent visual perception and remote sensing image processing and analysis. Some topics are given as follows.

                  Machine Learning New Methods: Deep Learning, Transfer Learning, Reinforcement Learning etc
                  New Models: Probabilistic Graph Model, Random Forest, HMM, GMM etc
                  New Representation: Non-negative Matrix Decomposition, Glocal (Global-local) features, etc
                  Heterogenerous Image Reconstruction Image Super-resolution Reconstruction from Multi-frame Images or Video Sequence
                  Single Image Super-resolution Reconstruction based on Dictionary Learning or GAN-like networks
                  High-resolution Face Reconstruction from Clips of Video Surveillance
                  Image Synthesis from Photo to Sketch
                  Image Synthesis from Sketch to Photo
                  Frontal Face Synthesis from Multi-view Faces
                  Please access the HIT Group's Webpage
                  Image Quality Assessment Full-reference Image or Video Quality Assessment
                  Reduced-reference Image or Video Quality Assessment
                  No-reference Image or Video Quality Assessment
                  Image Quality Assessment Based on fidelity, intelligibility, and aesthetics
                  Please access the IQA Webpage
                  Intelligent Image Perception Content-based Image Retrieval and Applications to Wisdom Tourism etc
                  Scene Perception based on New Topic Models
                  Pattern Recognition: Face Recognition, Character Recognition etc
                  Remote Sensing Image Processing & Analysis Remote Sensing Imaginary (RSI) based on Satellite, Unmanned Aerial Vehicle etc
                  3D Reconstruction based on Unmanned Aerial Vehicle
                  RSI Enhancement (Defogging, Dehazing) and Quality Assessment
                  Change Detection, Scene Perception and Object Recognition
                  Other Applications to Medical Image Analysis, Aurora Image Analysis etc
                  Networking and Communications on HAPS Networking on Demand for 3D Ad hoc
                  Cooperative Transmission: Intellectual routing, Network coding
                  Feedback based Network Dynamic Programming

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                  In the past, we did some research on the computational intelligence, visual information processing, analysis and understanding, and their applications on natural images, medical images, biometrics, security and communications. Also, we have developed some application system, especially software packages, such as PACS, medical image visualization system, 3G multimedia massaging service system and food safety detection system.
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                    Machine Learning: Algorithms and Theoretical Frameworks

                  As an active field of artificial intelligence (AI), machine learning is concerned with the task to make the computer obtain the intelligence of human beings by learning or computation, for examples, dimensionality reduction, feature extraction, classification, clustering, regression or fitting. According to the degree of dependence on the labeled samples, the machine learning is divided into three categories, supervised, unsupervised and semi-supervised learning. There are many interesting topics in this direction:

                    Sample Selection and Feature Selection: Bootstarp, Bagging, Boosting-like algorithms, Relevance feedback

                    Dimensionality Reduction:  Linear or nonlinear methods, Kernel PCA, LAD and their variations, GP-LVM, etc

                    Supervised Learning: Fuzzy NN, Kernel-based algorithms, Incremental Learning, etc

                    Unsupervised Learning: Cluster tendency, Fuzzy cluster analysis and Cluster validity, etc

                    Semi-supervised Learning: LNP-based algorithm, Pairwise constraint, Transfer learning, etc

                  Note: During the past ten years, I devoted myself to the research of cluster analysis. Cluster analysis is one of multivariate statistical analysis methods, and a branch of unsupervised pattern recognition. Its goal is to partition an unlabeled sample set into clusters such  that the homogenous samples are classified into the same cluster, and the inhomogeneous samples are classified into different clusters. As an effective analysis tool, cluster analysis has been widely used in image processing, computer vision, pattern recognition, fuzzy control and data mining.

                    Computational Intelligence: Algorithms and Theoretical Frameworks

                  Computational intelligence is an offshoot of artificial intelligence. As an alternative to GOFAI (good old-fashioned artificial intelligence) it rather relies on heuristic algorithms such as in fuzzy systems, neural networks and evolutionary computation. In addition, computational intelligence also embraces techniques that use Swarm intelligence, Fractals and Chaos Theory, Artificial immune systems, Wavelets, etc. Computational intelligence combines elements of learning, adaptation, evolution and Fuzzy logic (rough sets) to create programs that are, in some sense, intelligent. Computational intelligence research does not reject statistical methods, but often gives a complementary view (as is the case with fuzzy systems). Artificial neural networks is a branch of computational intelligence that is closely related to machine learning.

                    Fuzzy System:  Fuzzy Logic, Rough Sets, Vague Sets, Type-II Fuzzy, Granular computing, etc

                    Neural Networks: BP-like, RBF, LVQ, ART, SVM, Ying-Yang machine, etc

                    Natural-Inspired Algorithms: Genetic algorithm, Evolutionary programming, Artificial immune iystem, Clonal selection algorithm

                    Swarm Intelligence: Particle swarm optimization, Ant colony Algorithm, and Particle filtering

                    Sparsity Representation and Compressed Sensing: Multiscale geometric analysis, Dictionary learning, etc

                      Visual Information Processing, Analysis and Understanding

                  With the rapidly development of multimedia technology and internet, image and video becomes a popular and common media to transfer information. Hereby, image and video encoding (for storage or transport), processing (enhancement, restoration, and segmentation) and analysis (feature extraction based on color, region, edge, and texture)  attract more and more attention of researches. Content-based information retrieval, digital watermarking, and image and video quality assessment  become the most important research issues. Our research interests include:

                    Encoding: JPEG2000 for image, H.264, MPEG-4, MPEG-7 for video, H.323/SIP video conference system

                    Video Enhancement: Super-resolution reconstruction, De-interlacing, Frame rate up-conversion, Deblocking, In-painting, etc

                    Digital Watermarking: Robust and invertible watermarking, Image and video fingerprint, steganography, etc

                    Quality assessment for visual information: Perception-based  assessment methodology, Metrics and Databases

                    Segmentation: Spatial segmentation, Temporal segmentation for video, Spatio-temporal segmentation, /Level Sets

                    Content-based Information Retrieval:  Search engine, Content analysis, Automatic annotation, re-ranking, etc

                    Situation Analysis: Semantic analysis for News or Soccer program,  Aurora classification, Situation association

                    Video surveillance: Face detection, modeling (AAM), tracking, face sketch-based retrieval and recognition

                    Heterogeneous Image Synthesis and Recognition:  photo-sketch-cartoon, Near infrared-visible light-thermal infrared

                    Online Detection System: X-Ray detection for food security, Roller detection for paper-making, illegal information detection for MMS

                      Medical Image Processing and Analysis System

                  As an important application field of image engineering, medical image processing attracts much more of our research interest in recent years. With the theory and practice of image processing, we hope to speed up the progress of digital hospital and computer-aided diagnosis. This research direction mainly focuses on the development of medical image processing system (Software).

                    Protocol Parsing: DICOM3.0, HL-7 and related protocol

                    Scientific Visualization: 3D Reconstruction (surface and volume rendering), display, measurement and analysis

                    PACS: Picture archive and communication systems, Viewer, Interactive analysis

                    CAD: Computer-aided detection and diagnosis (Mammography, Lung)

                    IGS: Image-based guidance for surgery, Multi-modality fusion

                      Near Earth Space Information Grid

                  Near earth space information grid is a 3D Ad Hoc networks with multiple layers, which has the following features: (i) it can work for a relatively long time with prompt response; (ii) it is able to perform the surveillance and detection continuously; (iii) it can generate and change the network topology on demand. Hence, it would be widely applied to the circumstances like military detection, communication relay, anti-terrorism and disaster rescue. Based on the above characteristics, this project examines the 3D Ad hoc network design and cooperative transmissions. Through network optimization, and topology adjustment, we achieve the optimal network under service demand to transmit the information efficiently with high reliability at the expense of minimum cost. Specifically, we investigate the following three key issues:

                    3D Ad Hoc Network Design on Demand: Network modeling, Multi-objective optimization for networks

                    Cooperative Transmission:  Intellectual routing, Network coding, Physical layer coding and cooperation

                    Feedback based Network Dynamic Programming: Performance feedback, Topological adjustment

                  We explore the fundamental scientific issues from the practical applications, which are related to the network information theory. This study becomes challenging and insightful, when we consider it from a new perspective, new applications, and new circumstances. This project will produce the new theory, novel techniques, which lay out the foundations for the near earth space information grid networks.

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                  Last Modified: 2023-08-20

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