Last call registration: Invitation to join 2023 Summer ‘Programming short course and workshop on Deep Learning and Computer Vision’, 30 August – 1 September, 2023

Dear Deep Learning, Computer Vision, Digital Media engineers, scientists and enthusiasts,

  

you are welcomed to register to the  CVML course on ‘Programming short course and workshop on Deep Learning and Computer Vision’,  30th August – 1st September 2023:

https://icarus.csd.auth.gr/cvml-programming-short-course-and-workshop-on-deep-learning-and-computer-vision-2023/

 

It will take place at KEDEA Building, hosted by the Aristotle University of Thessaloniki (AUTH), Thessaloniki, Greece. The course  provides an in-depth presentation of programming tools and techniques for various computer vision and deep learning problems. The target application domains are autonomous systems (e.g., real time object detection) and digital/social media analysis for Natural Disaster Management. The short course consists of three parts (A, B, C), each having lectures and programming workshops with hands-on lab exercises. There will be complemented lecture pdfs, to enable you to study at your own pace. You can also self-assess your knowledge, by filling appropriate questionnaires (one per lecture).

 

This course is part of the very successful CVML programming short course and workshop series that has been taking place in the last four years.

 

Course description ‘Programming short course and workshop on Deep Learning and Computer Vision’

 

The short course consists of three parts (A, B, C), each having lectures and programming workshops with hands-on lab exercises.

 

Part A will focus on Deep Learning and GPU programming. The lectures of this part provide a solid background on Deep Neural Networks (DNN) topics, notably convolutional NNs (CNNs) and deep learning for image classification.

 

Part B lectures will focus on deep learning algorithms for Perception on Autonomous Systems, namely on 2D object/face detection and 2D object tracking.

Part C lectures will focus on Autonomous Systems in Natural Disaster Management (NDM). The lectures will provide a basic understanding of Real-Time Image Segmentation algorithms.

 

 

Course lectures and programming workshops

 

Part A (8 hours) Deep Learning for Autonomous Systems

 

  1. Deep neural networks – Convolutional NNs.
  2. Knowledge Distillation in Deep Neural Networks.
  3. Programming workshop on Deep neural networks – Convolutional NNs.
  4. Programming workshop on Knowledge Distillation in Deep Neural Networks.

 

Part B (8 hours) Autonomous Systems Perception

 

  1. Real Time Object Detection.
  2. 2D Object Tracking in Embedded Systems.
  3. Programming workshop on Real Time Object Detection.
  4. Programming workshop on 2D Object Tracking in Embedded Systems.

 

Part C (8 hours) Autnomous Systems in Natural Disaster Management

 

  1. Real-Time Image Segmentation.
  2. Natural Language Processing for Natural Disaster Management.
  3. Programming workshop on Real-Time Image Segmentation.
  4. Programming workshop on Natural Language Processing for Natural Disaster Management.

 

 

You can use the following link for course registration:

https://rc.auth.gr/product-list/single-product/128

 

 

For questions, please contact: Ioanna Koroni <koroniioanna@csd.auth.gr>

 

This programming short course is organized by Prof. I. Pitas, IEEE and EURASIP fellow and IEEE distinguished speaker.  He is the coordinator of the EC funded International AI Doctoral Academy (AIDA), that is co-sponsored by all 5 European AI R&D flagship projects (H2020 ICT48). He was initiator and first Chair of the IEEE SPS Autonomous Systems Initiative. He is Director of the Artificial Intelligence and Information analysis Lab (AIIA Lab), Aristotle University of Thessaloniki, Greece. He is Coordinator of the European Horizon2022 R&D project TEMA and he was Coordinator of the European Horizon2020 R&D project Multidrone. He is ranked 249-top Computer Science and Electronics scientist internationally by Guide2research (2018). He has 35500+ citations to his work and h-index 86+.

  

Relevant links:
1) Prof. I. Pitas:
https://scholar.google.gr/citations?user=lWmGADwAAAAJ&hl=el
2) Horizon2022 EU funded R&D project TEMA:  https://tema-project.eu/

3) Horizon2022 EU funded R&D project AI4EUROPE:  https://www.ai4europe.eu/

4) Horizon2020 EU funded R&D project Aerial-Core: https://aerial-core.eu/

5) Horizon2020 EU funded R&D project Multidrone: https://multidrone.eu/
6) International AI Doctoral Academy (AIDA): 
http://www.i-aida.org/
7) Horizon2020 EU funded R&D project AI4Media: 
https://ai4media.eu/
8) AIIA Lab: 
https://aiia.csd.auth.gr/ 

 

 

Sincerely yours

Prof. I. Pitas

Director of the Artificial Intelligence and Information analysis Lab (AIIA Lab)

Aristotle University of Thessaloniki, Greece

 

 

Post scriptum: To stay current on CVML matters, you may want to register in the CVML email list, following instructions in: https://lists.auth.gr/sympa/info/cvml

Call for submissions: IEEE World Forum on Public Safety Technology, machine learning is one of the highlighted topics

Future Directions

IEEE

 

 

 

FYI

PST 2023

 

IEEE World Forum on Public Safety Technology

The IEEE Public Safety Technology Initiative is excited to announce the launch of a new IEEE conference dedicated to public safety technologies. The 2024 IEEE World Forum on Public Safety Technology (WF-PST) will bring together researchers, practitioners, and industry stakeholders to address and improve current and future technology needs for public safety applications.

 

The 2024 WF-PST will be held near Washington, D.C. (in Dulles, VA), an area that is home to iconic museums, national monuments, and performing arts venues. The conference will be focused along the theme of “Showcasing Technology Transforming Public Safety” and will feature a comprehensive program including technical sessions, tutorials, and workshops across all areas of public safety technology.

 

Submit your original, unpublished technical paper, poster, or workshop/tutorial proposal for the opportunity to share your research and join us at this inaugural public safety conference. 

 

Call For Submissions 

Proposal Public Safety Topics:

 

•   Communications and Networking

•   Transportation

•   Edge Computing, Cloud Computing, and IoT

•   Blockchain and Forensics

•   Security, Privacy, and Trust

•   AI/ML, Smart Algorithms, and Intelligent Systems

•   Health and Wellness of Personnel

 

Visit the conference website for full submission guidelines.

Important Dates

 

Workshop Proposal Submission Deadline

11 September 2023

 

Tutorials Proposal Submission Deadline: 

23 October 2023

 

Paper Submission Deadline:

23 October 2023

 

Poster Submission Deadline:

11 December 2023

 

NeurIPS workshop on Causal Representation learning – deadline extended to Oct 2

We warmly invite you to submit a paper and participate in our Causal Representation Learning workshop (https://crl-workshop.github.io/) that will be held December 15, 2023 at NeurIPS 2023, New Orleans, USA.

Causal Representation Learning is an exciting intersection of machine learning and causality that aims at learning low-dimensional, high-level causal variables along with their causal relations directly from raw, unstructured data, e.g. images.

 

Our submission deadline has been extended to October 2, 2023, 23:59 AoE and the submission link is https://openreview.net/group?id=NeurIPS.cc/2023/Workshop/CRL. More information below.

 

***MOTIVATION AND TOPICS***

 

Current machine learning systems have rapidly increased in performance by leveraging ever-larger models and datasets. Despite astonishing abilities and impressive demos, these models fundamentally only learn from statistical correlations and struggle at tasks such as domain generalisation, adversarial examples, or planning, which require higher-order cognition. This sole reliance on capturing correlations sits at the core of current debates about making AI systems “truly'' understand. One promising and so far underexplored approach for obtaining visual systems that can go beyond correlations is integrating ideas from causality into representation learning.

 

Causal inference aims to reason about the effect of interventions or external manipulations on a system, as well as about hypothetical counterfactual scenarios. Similar to classic approaches to AI, it typically assumes that the causal variables of interest are given from the outset. However, real-world data often comprises high-dimensional, low-level observations (e.g., RGB pixels in a video) and is thus usually not structured into such meaningful causal units. 

 

To this end, the emerging field of causal representation learning (CRL) combines the strengths of ML and causality. In CRL we aim at learning low-dimensional, high-level causal variables along with their causal relations directly from raw, unstructured data, leading to representations that support notions such as causal factors, interventions, reasoning, and planning. In this sense, CRL aligns with the general goal of modern ML to learn meaningful representations of data that are more robust, explainable, and performant, and in our workshop we want to catalyze research in this direction.

 

This workshop brings together researchers from the emerging CRL community, as well as from the more classical causality and representation learning communities, who are interested in learning causal, robust, interpretable and transferrable representations. Our goal is to foster discussion and cross-fertilization between causality, representation learning and other fields, as well as to engage the community in identifying application domains for this emerging new field. In order to encourage discussions, we will welcome submissions related to any aspect of CRL, including but not limited to:

· Causal representation learning, including self-supervised, multi-modal or multi-environment CRL, either in time series or in an atemporal setting, observational or interventional,

· Causality-inspired representation learning, including learning representations that are only approximately causal, but still useful in terms of generalization or transfer learning,

· Abstractions of causal models or in general multi-level causal systems,

· Connecting CRL with system identification, learning differential equations from data or sequences of images, or in general connections to dynamical systems,

· Theoretical works on identifiability in representation learning broadly,

· Real-world applications of CRL, e.g. in biology, healthcare, (medical) imaging or robotics; including new benchmarks or datasets, or addressing the gap from theory to practice.

 

***IMPORTANT DATES***

 

Paper submission deadline: September 29 October 2, 2023 23:59 AoE 

Notification to authors: October 27, 2023, 23:59 AoE

Camera-ready version and videos: December 1, 2023, 23:59 AoE

Workshop Date: December 15 or 16, 2023 at NeurIPS

 

***SUBMISSION INSTRUCTIONS***

 

As for all NeurIPS workshops, submissions should contain original and previously unpublished research and they should be formatted using the NeurIPS latex style. Papers should be submitted as a PDF file and should be maximum 6 pages in length, including all main results, figures, and tables. Appendices containing additional details are allowed, but reviewers are not expected to take this into account. 

 

The workshop will not have proceedings (or in other words, it will not be archival), which means you can submit the same or extended work as a publication to other venues after the workshop. This means we also accept (shortened versions of) submissions to other venues, as long as they are not published before the workshop date in December.

 

Submission site: https://openreview.net/group?id=NeurIPS.cc/2023/Workshop/CRL

 

 

***ORGANIZERS***

 

Sara Magliacane, University of Amsterdam and MIT-IBM Watson AI Lab

Atalanti Mastakouri, Amazon

Yuki Asano, University of Amsterdam and Qualcomm Research

Claudia Shi, Columbia University and FAR AI

Cian Eastwood, University of Edinburgh and Max Planck Institute Tübingen

Sébastien Lachapelle, Mila and Samsung’s SAIT AI Lab (SAIL)

Bernhard Schölkopf, Max Planck Institute Tübingen 

Caroline Uhler, MIT and Broad Institute

 

CFP: Share your Advancements in Imaging Science

;font-size:11pt;margin:0px;color:rgb(32,31,30);background-color:rgb(255,255,255)”> Please contact info@imaging.org for immediate requests!

Connect with us on LinkedIn and Twitter @ImagingOrg

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Call for Applications to the Restore Center Pilot Project Program

August 22nd, 2023 Daniela Lopez de Luise

My name is Matt Petrucci and I am the Scientific Program Manager for the Restore Center at Stanford University. I hope this email finds you well!

 

Our Center is currently seeking proposals for our pilot project program, which is focused on innovative and meritorious projects to accelerate the use of sensor and video technology in rehabilitation research and to advance real-world monitoring and delivery of medical rehabilitation for individuals with impaired movement. Projects of particular interest are those that use or extend tools that are supported and disseminated by the Restore Center, such as OpenCap, OpenSense, and Sit2Stand. Applications are due on October 4th, 2023.

 

Would it be possible for you to help spread the word in your community via a newsletter, retweet on Twitter, or repost on LinkedIn?

 

Twitter Announcement: https://twitter.com/restore_center/status/1687575285380829184?s=20 

 

LinkedIn: https://www.linkedin.com/posts/restore-center_pilot-project-application-activity-7093342026632474625-_vhs?utm_source=share&utm_medium=member_desktop 

 

Newsletter Text:

 

Apply for a Pilot Project Grant of up to $30,000

 

The Restore Center seeks proposals for their pilot project program. The program awards seed grants to innovative and meritorious projects that will accelerate the use of sensor and video technology in rehabilitation research and will advance real-world monitoring and delivery of medical rehabilitation for individuals with impaired movement. Projects of particular interest are those that use or extend tools that are supported and disseminated by the Restore Center, such as OpenCap, OpenSense, and Sit2Stand. Applicants can request up to $30,000 in funding. Individuals from underrepresented racial and ethnic groups, as well as individuals with disabilities, are encouraged to apply. Applications are due October 4, 2023.

Learn more and apply

 

If you have any other groups or individuals that you think may be interested, please feel free to share it with them as well. Thank you so much for your time and please let me know if you have any questions or concerns.


Best,

Matt

 

Matthew Petrucci, PhD

Scientific Program Manager

Mobilize Center | Restore Center

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