The Open AI Team (OAIT)


RESEARCH PROJECTS

AI/ML for Smart Energy

  1. Preventing Wildfires in Energy Transmission by Automatic Power Line Defects Detection Using Machine Learning and AI [2]
         project lead: prof. Liu, prof. Pong, prof. Li
         members: C. Yang, R.R. Yesgari, D. Jeet, V. Vora
  1. Machine Learning and AI for Optimizing and Safeguarding Energy Transmission in Storms by Automatic Inspection of Electrical Wires [1]
        project lead: prof. Liu, prof. Pong, prof. Li
        members: Z. Yu, K.S. Ganni,  N.N. Kantraria, J.A.Mehta, C. Sharma, J.B.R. Kallam

AI/ML for Smart Health

  1. AI Medical System for Breast Cancer Detection: "Innovative AI Model for Accurately Predicting Margin Positivity from Intraoperative Digital Specimen Mammograms to Guide Surgical Decision-making and Reduce Re-excision Rates"
        project lead: prof. Liu,
        members: C. Yang, S. Chen, R.R. Yesgari, K.S. Ganni, J.B.R. Kallam, C. Sharma, D. Jeet
  1. Privacy-preserving and Interpretable AI Rosacea Detection using Deep Learning: "Innovative AI for Rosacea Detection and Innovating Interpretability of AI Models for Enhancing Trust and Adoptability"
        project lead: prof. Liu,
        members: C. Yang, P. Pechetti, K. Kanda, R.R. Yesgari
        award: NJIT Grace Hopper Artificial Intelligence Research Institute seed grant, NJIT, 2025-2026.
  1. AI Medical System for Parkinson's Disease Detection: "Robust Parkinson’s Disease Early Detection Using Advanced Open and Scalable AI with the Optimal Feature Extraction and the Bayes Classifier"
        project lead: prof. Liu,
        members: Z. Yu, C. Sharma, J.A. Mehta, N.N. Kantaria, C. Qiao
  1. AI Medical System for Alzheimer's Disease Detection: "Deep Learning Based Prediction of Alzheimer’s Disease Conversion From Mild Cognitive Impairment Using Structural MRI: Toward an Early-Detection AI Doctor"
        project lead: prof. Liu,
        members: C. Yang, R.R. Yesgari, K. Kanda, J.A. Mehta, J.B.R. Kallam, S. Chen
        CBS Evening News (November 7, 2025)
  1. AI Medical System for Automatic Brain Tumor Detection: "ASHVINI: AI Surgical Histopathology Visualization & Interpretable Network Intelligence for Glioma Detection"
        project lead: prof. Liu, Dr. Hadi,
        members: C. Sharma, K.S. Ganni
  1. AI Medical System for Medical Data Security: "Innovative Artificial Intelligence Framework for Medical Data Security in Large Language Models"
        project lead: prof. Liu, Dr. Hadi,
        members: Z. Yu, C. Sharma, N.N. Kantaria, A. Sharma
  1. AI Medical System for Electronic Health Records Prediction: "LLM–LNN Neuro-Symbolic Framework for Explainable Healthcare Cost Prediction from Electronic Health Records"
        project lead: prof. Liu, Dr. Hadi,
        members: C. Yang, Z. Yu, S. Chen, R.R. Yesgari, K.S. Ganni, K. Kanda, D. Jeet
  1. Laparoscopic Image Desmoking and Enhancement for Improving Surgical Visualization
        project lead: prof. Liu,
        members: C. Yang, P. Pechetti
  1. AI Medical System for Brain Trauma Detection
        project lead: prof. Liu, Dr. Hadi,
        members: J.B.R. Kallam, K.S. Ganni
  1. AI Medical System for Automatic Liver Tumor Detection
        project lead: prof. Liu, Dr. Hadi,
        members: C. Sharma, K.S. Ganni
  1. AI Medical System for Automatic Prostate Tumor Detection
        project lead: prof. Liu, Dr. Hadi,
        members: C. Sharma, K.S. Ganni
  1. AI Medical System for Automatic Skin Tumor Detection
        project lead: prof. Liu, Dr. Hadi,
        members: C. Sharma, K.S. Ganni
  1. AI Medical System for Automatic Gastric Tumor Detection
        project lead: prof. Liu, Dr. Hadi,
        members: C. Sharma, K.S. Ganni

Video Analytics for Improving Traffic Safety, Home Security, Smart UAS/Drones, and Autonomous Driving

(Sample Videos from NJ Transit & Panasonic Technology Center -- password protected)
  1. Advanced Video Analytics for Reducing Traffic Congestion, Improving Traffic Safety
        project lead: prof. Liu, Dr. Hang
        members: C. Sharma, R.R. Yesgari, D. Jeet, N. Basmacier
        awards: NSF, NJDOT, USDOT SBIR I
  1. Advanced Video Analytics for Improving Home Security
        project lead: prof. Liu, Dr. Hang
        members: C. Sharma, R.R. Yesgari, N. Basmacier
        product: home security system/software by iAI Tech LLC (customer controlled local recording, advanced events/people detection)
  1. Advanced Video Analytics for Smart Unmanned Aircraft Systems (UAS)/Drones
        project lead: prof. Liu, Dr. Hang
        members: C. Sharma, R.R. Yesgari, N. Basmacier
        awards: NIST Enhancing Computer Vision for Public Safety Challenge 2020;
                      NIST First Responder UAS Triple Challenge – FastFind: UAS Search Optimized (UAS 3.1);
                      (Note that due to our USDOT SBIR's Pitch Day/$150k scheduled to the week of May 9, 2022, we could not attend the Stage 3 live test)
                      US Ignite: AI for IoT Information (AI3) Prize Competition
  1. Advanced Video Analytics for Traffic Incidents Detection and Autonomous Driving
        project lead: prof. Liu, Dr. Hang
        members: R.R. Yesgari, C. Qiao, N. Basmacier, C. Sharma
        demos: links

Facial Recognition for Enhancing Security and Public Safety

  1. Advanced Face Detection for Keeping Compliance with Pandemic/Covid Law Enforcement (e.g., masking)
        project lead: prof. Liu
        members: Z. Yu, V. Vora, K. Kanda, N. Kantaria
  1. Advanced Face Detection for Counting Customers/Patrons at Restaurants, Department Stores, Grocery Stores
        project lead: prof. Liu
        members: Z. Yu, V. Vora, K. Kanda, N. Kantaria, A. Sharma
  1. Advanced Face Detection for Visitors Counting at Resorts, Attractions (e.g., NYC)
        project lead: prof. Liu
        members: Z. Yu, V. Vora, K. Kanda, N. Kantaria
  1. Advanced Facial Recognition for Detecting Suspects and Terrorists at Public Places
        project lead: prof. Liu
        members: Z. Yu, V. Vora, K. Kanda, N. Kantaria, A. Sharma
  1. Advanced Facial Recognition for Smart Business at Fast Food Restaurant, Banks, Etc.
        project lead: prof. Liu
        members: Z. Yu, V. Vora, K. Kanda, N. Kantaria, A. Sharma
  1. Advanced Facial Recognition for Smart Voting, Crowd Control
        project lead: prof. Liu
        members: Z. Yu, V. Vora, K. Kanda, N. Kantaria, A. Sharma

OBJECTIVE

by leveraging our critical expertise in advanced statistical learning, image/video analytics, computer vision, pattern recognition, learning, and AI.
  1. AI/ML for Smart Energy by OAIT
  2. AI/ML for Smart Health -- Towards Developing AI Doctor & Digital Assistant by OAIT
  3. Video Analytics for Reducing Traffic Congestion, Improving Traffic Safety, and Autonomous Driving by OAIT
  4. Facial Recognition for Enhancing Security and Public Safety by OAIT
  1. LLMs by OpenAI, DeepSeek
  2. LIMs, LVMs, LXMs, LMMs, and LOMs by OAIT
  1. NVIDIA
  2. AMD
  3. Intel
  1. AI/ML for Smart Energy by OAIT

MEMBERS

Doctoral Students:
  1. Chen, Sijin (advisor: Prof. Perl)
  2. Yang, Chengyu [G1, 2-8]
  3. Yu, Zhou [1]
Master's Students:
  1. Dave, Jeet
  2. Ganni, Krishna Sathvika [1]
  3. Kallam, Jai Bharath Reddy
  4. Kantaria, Nikunj Nileshkumar
  5. Mehta, Jay Ashokkumar [1]
  6. Pechetti, Punith
  7. Sharma, Ashvin
  8. Sharma, Chirag
  9. Vora, Vineet [2]
Undergraduate students:
  1. Basmacier, Nicole (Honors College)
  2. Kanda, Karan (Honors College)
  3. Qiao, Cindy (University of Toronto)
  4. Yesgari, Rishik Reddy [G1, 2, 4, 6]

Awards & Publication

     [G1] NJIT Grace Hopper Artificial Intelligence Research Institute seed grant, NJIT, 2025-2026.
  1. Z. Yu, K.S. Ganni, J.A. Mehta, P. Pong, J. Li, and C. Liu, "Machine Learning and AI for Optimizing and Safeguarding Energy Transmission in Storms by Automatic Inspection of Electrical Wires", 2025, IEEE Xplore
  2. C. Yang, R. Yesgari, V. Vora, P. Pong, J. Li, and C. Liu, "Preventing Wildfires in Energy Transmission by Automatic Power Line Defects Detection Using Machine Learning and AI", 2025, IEEE Xplore
  3. C. Yang and C. Liu, "Towards Building AI Doctor and Digital Assistant by Capitalizing on A Mixture of AI Medical Systems", the 6th International Conference on Medical Imaging and Computer-Aided Diagnosis, Nov. 19-21, 2025, London, UK
  4. C. Yang, R. Yesgari, and C. Liu, "Privacy-Preserving Automated Rosacea Detection Based on Medically Inspired Region of Interest Selection", IEEE International Conference on Electrical and Computer Engineering Researches, 06-08 December 2025, Antananarivo, MADAGASCAR
  5. C. Yang and C. Liu, "Investigating the Impact of Various Loss Functions and Learnable Wiener Filter for Laparoscopic Image Desmoking", the 6th International Conference on Medical Imaging and Computer-Aided Diagnosis, Nov. 19-21, 2025, London, UK
  6. C. Yang, R. Yesgari, and C. Liu, "Patch-based Automatic Rosacea Detection Using the ResNet Deep Learning Framework", the 6th International Conference on Medical Imaging and Computer-Aided Diagnosis, Nov. 19-21, 2025, London, UK
  7. C. Yang and C. Liu, "Laparoscopic Image Desmoking Using the U-Net with New Loss Function and Integrated Differentiable Wiener Filter", IEEE the 11th International Conference on Big Data Computing Service and Machine Learning Applications, July 21-24, 2025, Tucson, Arizona
  8. C. Yang and C. Liu, "Interpretable Automatic Rosacea Detection with Whitened Cosine Similarity", IEEE the 17th International Conference on Computer Research and Development, January 17-19, 2025, Jiangxi, China
  9. here for more papers

AREA TOPICS

I. AI/ML for Energy Transition Optimization and Smart Energy on the Wulver/GPU platform

We plan to apply various innovative and advanced AI, deep learning, statistical learning methods for energy transition optimization and smart energy. Specifically, we will apply our advanced AI and deep learning approaches to automatically inspect and protect electrical wires from being damaged by the falling tree limbs during major storms. Such damages not only bring inconvenience to communities, but may also endanger human lives because the falling live wires pose the potential danger of electrocuting people. We will also apply our advanced image and video analysis technologies to inspect the electrical wires automatically for potential risks that may cause wild fires in the woods and remote areas. Some demos and preliminary results using our innovative AI, deep learning, computer vision, and pattern recognition methods are publicly accessible at (https://web.njit.edu/~cliu/AISH.html) for AI Doctor & Digital Assistant for providing the best care for anyone, anywhere, and anytime; at (https://web.njit.edu/~cliu/NJDOT/DEMOS.html) for automated traffic incidents detection and traffic congestion detection for improving traffic safety and autonomous driving; at (https://frvp.njit.edu) for advanced facial detection and recognition for enhancing security and public safety. We will leverage these innovative methods for addressing energy transition optimization and smart energy tasks.

II. AI/ML for Smart Health using the Wulver/GPU platform to Develop AI Doctor & Digital Assistant

The World Health Organization (WHO) estimates that 5.7 to 8.4 million deaths annually are attributable to poor quality care, i.e., people reach care but get substandard or delayed care. Another study reveals that 8.6 million excess annual deaths were amenable to health care of which 5.0 million were due to poor-quality care and 3.6 million lack of health care.

To meet these challenges and save lives, an interdisciplinary team from the NJIT, the Rutgers medical school, and the MSKCC in New York, proposes to move from isolated models to a unified ecosystem of interoperable AI systems that together form an AI doctor & digital assistant platform. This framework will help improve the quality of life & the health of the country by providing the best care for everyone, everywhere, and at any time, and as a result, the excessive waiting time like weeks or months to see a doctor will be completely eliminated. Note that NASA and Google currently are also developing AI Doctor & Digital Assistant for astronauts who are planning a trip to Mars. In contrast to NASA and Google’s project, which uses large language models or LLMs, our project applies digital images, digital videos, X-ray, CT scans, MRIs (e.g., brain imaging), Positron Emission Tomography (PET) scans etc. to integrate a mixture of AI medical systems into the AI doctor & digital assistant framework for all people anywhere and anytime.

III. Video Analytics on the Wulver/GPU platform for Reducing Traffic Congestion, Improving Traffic Safety, Home Security, Smart UAS/Drones, and Autonomous Driving

In the United States alone, traffic congestion costs hundreds of billions of dollars annually in direct and indirect losses. Through added emissions of harmful substances, they also contribute to environment degradation and global warming, and adversely affect people’s quality of life. It is thus urgent to develop innovative ways to slow or even reverse the trend of growing congestion. This research will integrate advanced traffic detection system, wireless communications, distributed computing, sensing technologies, and cooperative vehicle-infrastructure architecture. It fits well with the Smart City initiative driven by the U.S. Department of Transportation (USDOT) to make our cities more livable, safer, faster, and greener.

Recently FOX Business reported that "Tesla under federal investigation over self-driving cars allegedly breaking traffic laws". For example, Wrong-Way Driving -- "Teslas crossing double-yellow lines, entering oncoming traffic or attempting to turn onto roads in the wrong direction." The OAIT has developed innovative and advanced video analytics technologies to save human lives. Some video analytics demos are able to detect the following traffic incidents:

IV. Facial Recognition using the Wulver/GPU for Enhancing Security and Public Safety

The OAIT has developed innovative and advanced statistical kernel methods, such as the multiclass Kernel Fisher Analysis (KFA) method and achieved the best performance on the government organized large-scale face recognition grand challenge (FRGC) competition. The novel and advanced statistical methods for facial recognition include a slew of new color models and innovative color feature extraction approaches, the Novel Locally Linear KNN Method, A Sparse Representation Model Using the Complete Marginal Fisher Analysis Framework, new efficient SVM (eSVM), Clustering-based Discriminant Analysis, Feature Local Binary Patterns, New Color SIFT Descriptors, the Bayes Decision Rule Induced Similarity Measures, a novel Bayesian Discriminating Features Method, the enhanced Independent Component Analysis (eICA), the new Gabor Feature based Classifier (GFC), the Evolutionary Pursuit (EP) method, the Probabilistic Reasoning Models (PRMs), and the Enhanced Fisher linear discriminant Models (EFMs).


Q&A (a break from Boeing's 777 working schedule, meant for relaxing&amusing)

Q: What's the difference between OAIT and OpenAI?
A: Oh obvious -- OpenAI is a money burner ($100B from NVIDIA, 10% of AMD), while OAIT generates resources & creates opportunities by collaborating with anyone, anywhere, and anytime. OpenAI uses brute force ($100Bs' infrastructure), while OAIT applies smart AI/ML methodology (e.g., Bayes classifier, novel kernel methods). Working together, with our broad intelligence beating their narrow (deep learning) intelligence, let's buy OpenAI out to eliminate the confusion. Working together, sky is not the limit for OAIT, which will innovate technologies that enable your July 4th's trip to Moon, and your ambitious exploration travel to Mars (beyond billionaires' a few-minute space travels). 

Q: How do you compare OAIT with NVIDIA, AMD, Tesla, Microsoft, Apple, Meta?
A: Oh OAIT members all have college degrees. CEO wise, half of them are immigrants (oh, POTUS is great -- to avoid my deportation), and all of them are super rich (.com's motto is CEO first). In contrast, OAIT members will join the elite club (.org's motto is members first), while its founders will remain their current millionaire status, because "Mama said there's only so much fortune a man really needs, and the rest is just for showing off".

Q: So are you hinting that you are the best in AI?

A: "I'm only the best because I work with the best".


Milestones/Breakthroughs/Contributions

10/17/2025: FDA-approved Weight Loss Panacea (WLP, 减肥灵).
Clinical trials: Prof. Liu taking the WLP for a bit less than 4 weeks changed from Overweight to Normal according to the BMI table.
Our WLP has no side effects, and it's not addictive (anybody can quit immediately).
Our WLP's cost is absolutely free, i.e. $0, in contrast to the POTUS's MFN drug pricing.

Under the auspices of OAIT, we hereby release all the technical details of WLP: the Boeing 777 working schedule, i.e., 7am ~ 7pm daily & 7 days per week.

The estimated cost savings are $71B per year in the US alone, and will reach gazillion (Forrest Gump) world wide.