2nd Workshop on Automated Spatial and Temporal Anomaly Detection (ASTAD)

Overview


Anomalies and outliers in visual data can greatly affect the performance and reliability of computer vision systems. As computer vision applications expand across various fields, the need for robust and efficient anomaly detection techniques becomes crucial. This workshop aims to unite researchers, industry experts, and practitioners to explore the latest advancements in automated anomaly detection methods tailored specifically for computer vision tasks. The primary goal of this workshop is to provide a platform for researchers to share and discuss their cutting-edge research in anomaly detection within computer vision. We aim to foster collaboration, encourage knowledge exchange, and promote the development of novel approaches to address the challenges posed by anomalies in visual data. The expected outcome of this workshop is a vibrant exchange of knowledge and ideas among researchers and practitioners. Through insightful presentations, discussions, and interactive sessions, participants will gain a comprehensive understanding of the latest AI-based methodologies for anomaly detection in computer vision. The workshop seeks to inspire new research directions, encourage collaborations, and promote the development of innovative solutions to real-world challenges in anomaly detection. As a result, attendees will leave the workshop with valuable insights and practical tools that will contribute to advancements in anomaly detection techniques, ultimately leading to more robust and reliable computer vision systems across various domains.

Call for Paper


We invite researchers and practitioners to submit their original research contributions to the 2nd Workshop on Automated Spatial and Temporal Anomaly Detection (ASTAD), held as part of WACV 2025. This workshop aims to explore the latest advancements and novel approaches in anomaly detection using AI techniques within the domain of computer vision. Topics of Interest (but not limited to):

  • Novel AI architectures for anomaly detection in images and videos
  • Large-scale anomaly datasets and benchmarking methodologies
  • Self-supervised, unsupervised, and few-shot anomaly detection techniques
  • Continual Learning for anomaly detection
  • Interpretability and explainability in anomaly detection models
  • Real-world applications of anomaly detection in computer vision
  • Large-Language Models (LLMs) and Anomaly Decetion

Submission Site: Microsoft CMT

Schedule


March 4, 2025 (Time below is in Arizona local time)

  • 08:00-08:10 AM: Opening
  • 08:10-09:00 AM: Keynote Take by Prof. Guansong Pang (Learning Generalist Anomaly Detectors)
  • 09:00-09:50 AM: Keynote Talk by Prof. Maja Rudolph (Model Selection for Anomaly Detection)
  • 9:50-10:00 AM: Break
  • 10:00-10:30 AM: Oral Presentation Session
    • 10:00-10:10AM: AnoFPDM: Anomaly Detection with Forward Process of Diffusion Models for Brain MRI 
    • 10:10-10:20AM: PCAD: A Real-World Dataset for 6D Pose Industrial Anomaly Detection
    • 10:20-10:30AM: Detecting Contextual Anomalies by Discovering Consistent Spatial Regions
  • 10:30-11:20 AM: Keynote Talk by Prof. Leman Akoglu (Toward Zero-shot Anomaly Detection) (Slides)
  • 11:20 AM -12:10 PM: Keynote Talk by Prof. Andrea Ceccarelli (Anomaly-based intrusion detection : Challenges and possible strategies from unknowns to APT detection) (Slides)
  • 12:10 PM -12:30 PM: Closing and Poster Session

Important Dates


The important dates are as follows:

  • Paper submission deadline: Dec 1, 2024
  • Author notification: Jan 6, 2025
  • Camera-ready deadline: Jan 10, 2025

Speakers


Leman Akoglu

Carnegie Mellon University

Dr. Akoglu is the Heinz College Dean’s Associate Professor at Carnegie Mellon University’s Heinz College of Information Systems and Public Policy. She also hold courtesy appointments at the Machine Learning Department (MLD) and the Computer Science Department (CSD) of School of Computer Science (SCS). At Heinz, she directs the Data Analytics Techniques Algorithms (DATA) Lab. Her research interests are broadly in data mining, graph mining, machine learning, and knowledge discovery, with specific focus on anOmaLiEs—identifying and characterizing ‘what stands out’ in large-scale, time-varying, multi-modal data sources through scalable computational methods.

Google ScholarLinkedIn

Maja Rudolph

University of Wisconsin–Madison

Maja Rudolph is a Research Professor at the Data Science Institute, University of Wisconsin-Madison, specializing in probabilistic machine learning and generative AI. Previously, she was a Machine Learning Researcher at the Bosch Center for AI, where she advanced the fields of anomaly detection and hybrid modeling. Maja earned her Ph.D. in Computer Science from Columbia University under the mentorship of David Blei and holds a B.S. in Mathematics from MIT.

Google ScholarLinkedIn

Guansong Pang

Singapore Management University

Dr. Guansong Pang is an Assistant Professor at the School of Computing and Information Systems, Singapore Management University, specializing in anomaly detection, machine learning, and data mining. His research focuses on developing innovative algorithms for anomaly detection, outlier detection, and self-supervised learning, with applications across cybersecurity, fraud detection, and industrial monitoring. Dr. Pang has published extensively in top-tier journals and conferences, contributing influential work that bridges theoretical advances and practical applications in data science.

Google ScholarLinkedIn

Andrea Ceccarelli

University of Florence

Andrea Ceccarelli is Associate Professor in Computer Science at the Department of Mathematics and Informatics of the University of Florence (Italy), and has nowadays above 15 years of experience in the design and assessment of dependable and secure systems and System-of-Systems, with a preference for experimental approaches. He has published above 100 papers and he has been program co-chair of SRDS, SafeComp, LADC, and he is a member of the IFIP WG 10.4 on Dependable Computing and Fault Tolerance.

Google ScholarLinkedIn

Organizers


Narges Armanfard (Chair)

Associate Professor

Narges Armanfard is an Associate Professor of Electrical and Computer Engineering at McGill University and Mila - Quebec AI Institute. She is also affiliated with McGill Centre for Intelligent Machines (CIM), McGill initiative in Computational Medicine (MiCM) and McGill Institute for Aerospace Engineering (MIAE). Dr. Armanfard is the founder and principal investigator of the iSMART Lab with the mission to pioneer advanced algorithms in artificial intelligence, with expertise in computer vision, time series analysis, tabular data, large language models, and visual language models.

Google ScholarLinkedIn

Dimitrios Sinodinos

AI Researcher (PhD)

Dimitrios completed his Bachelor’s degree in Electrical Engineering at McGill University and was awarded the British Association Medal for graduating with the highest CGPA in the department. Shortly after starting his Master’s, Dimitrios fast-tracked into a PhD, where he received the MEDA Award and was selected into the prestigious Vadasz Scholars program. His research involves multi-task learning learning employing lightweight multimodal large language models.

Google ScholarLinkedIn

Hadi Hojjati

AI Researcher (PhD)

Hadi received his Bachelor’s degree in Electrical Engineering from Sharif University of Technology, Iran. He started as an MSc student at the iSMART Lab. and fast-tracked to PhD. He has received Graduate Excellence Fellowship Award (GEF), McGill Engineering Doctoral Award (MEDA), GREAT Award, and AGE-WELL Award. He is currently doing research on multi-modal and multi-variate anomaly detection in time-series data.

Google ScholarLinkedIn

Thi Kieu Khanh Ho

AI Researcher (PhD)

Khanh received her Master’s degree at Gwangju Institute of Science and Technology (GIST), South Korea. She was a researcher at Seoul National University Hospital (SNUH), South Korea, before moving to Montreal for her PhD. She has received the prestigious McGill Engineering Doctoral Award (MEDA), GREAT Award and is nominated for the prestigious Vanier Scholarship. Her research focuses on time-series data anomaly detection using generative models and graphs.

Google ScholarLinkedIn

Thomas Lai

AI Researcher (PhD)

Thomas received his Bachelor of Engineering (B.Eng.) from McGill University. A year after starting his Master’s at the iSMART Lab, Thomas fast-tracked into a PhD. He is a recipient of the MEUSMA and FRQ awards. His research is on open-set anomaly detection.

Google ScholarLinkedIn

Alexander Koran

AI Researcher (MSc)

Alex grew up near Boston, and he moved to Montreal after finishing high school to pursue his undergraduate studies at McGill. He completed his Bachelor’s Degree in Computer Engineering with a math minor and an AI minor in Fall 2023. Some of his research interests are algorithm design, machine learning applications, and quantum computing. He is now pursuing a Master’s of Science at the iSMART lab and is a recipient of the GEF award. His MSc thesis focuses on time series anomaly detection.

Google ScholarLinkedIn

Jack Wei

AI Researcher (MSc)

Jack (Yi) Wei received his Bachelor’s degree in Computer Engineering with a minor in Mathematics from McGill University. He is the recipient of the McGill Engineering Undergraduate Student Award (MEUSMA). His interest lies in tabular data analysis.

Google ScholarLinkedIn

Zihan Wang

AI Researcher (MSc)

Zihan received his Bachelor’s degree in Electrical and Computer Engineering from the University of Alberta, Canada. He is now an MSc student at the iSMART Lab. He is the recipient of the Graduate Excellence Fellowship Award. His research at the iSMART Lab is focused on continual learning with large language models for anomaly detection.

Google ScholarLinkedIn