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SIGML 2026 : 7th International Conference on Signal Processing and Machine Learning

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Link: https://ccseit2026.org/sigml/index
 
When Mar 14, 2026 - Mar 15, 2026
Where Vienna, Austria
Submission Deadline Jan 24, 2026
Notification Due Feb 21, 2026
Final Version Due Feb 28, 2026
Categories    signal processing   machine learning   image processing   deep learning
 

Call For Papers

7th International Conference on Signal Processing and Machine Learning (SIGML 2026)

March 14~ 15, 2026, Vienna, Austria

Scope & Topics

7th International Conference on Signal Processing and Machine Learning (SIGML 2026) serves as a premier global forum for presenting and exchanging innovative research, methodologies, and applications in Signal Processing and Machine Learning. The conference aims to bring together researchers, practitioners, and industry experts to discuss recent breakthroughs, emerging trends, and cutting‑edge developments shaping the future of the field.

Authors are invited to submit original research papers, case studies, survey articles, and industry‑driven contributions that demonstrate significant advances in, but not limited to, the following areas.

Topics of interest include, but are not limited to, the following

    Signal Processing

  • Advanced Digital Signal Processing
  • Statistical, Adaptive & Multirate Signal Processing
  • Sparse, Compressive & High Dimensional Signal Processing
  • Signal Processing for 5G/6G Communications
  • MIMO, OFDM & Next Generation Transmission Techniques
  • Signal Processing for IoT & Cyber Physical Systems
  • Multimodal Signal Processing
  • Audio, Speech & Acoustic Signal Processing
  • Biomedical, Neural & Physiological Signal Processing
  • Remote Sensing, Radar, LiDAR & Earth Observation
  • Signal Processing for Edge, Embedded & Low Power Systems

    Imaging, Vision & Multimedia

  • Image, Video & Multimodal Data Processing
  • Computational Imaging & Image Reconstruction
  • High Dimensional Imaging (Hyperspectral, Light Field, Radar, MRI)
  • 3D Vision, Scene Understanding & Reconstruction
  • Motion Analysis, Tracking & Visual SLAM
  • Image/Video Compression, Transmission & Quality Assessment
  • Generative Vision Models (Diffusion, GANs, NeRFs)
  • Vision Language Models & Multimodal Fusion
  • Efficient Vision Models for Real Time & Edge Deployment

    Machine Learning Theory & Methods

  • Deep Learning Architectures & Optimization
  • Self Supervised, Weakly Supervised & Unsupervised Learning
  • Reinforcement Learning & Sequential Decision Making
  • Graph Neural Networks & Structured Learning
  • Continual, Lifelong, Transfer & Meta Learning
  • Causal Inference & Causal Representation Learning
  • Probabilistic Modeling, Bayesian Methods & Variational Inference
  • Large Scale Optimization for ML
  • Foundation Models & Large Scale Pretraining

    Trustworthy, Responsible & Secure AI

  • Robustness, Adversarial ML & Secure Learning
  • Explainability, Interpretability & Transparency
  • Fairness, Bias Mitigation & Ethical AI
  • Privacy Preserving ML (Differential Privacy, Federated Learning)
  • Safety, Reliability & Governance of AI Systems
  • Efficient ML Systems & Hardware
  • Model Compression, Pruning & Quantization

    Efficient Training & Inference Algorithms

  • Distributed, Federated & Edge Learning
  • TinyML & Ultra Low Power ML
  • Hardware Accelerated ML (GPU/TPU/ASIC/Neuromorphic/Photonic)
  • Systems for Large Scale ML & Foundation Models

    Applications & Emerging Domains

  • ML & Signal Processing for IoT and Industrial IoT
  • Autonomous Systems, Robotics & Embodied Intelligence
  • Healthcare, Bioinformatics & Wearable Sensing
  • Smart Cities, Transportation & Infrastructure
  • Environmental Monitoring, Climate Analytics & Sustainability
  • Finance, Security, Fraud Detection & Risk Modeling
  • Human Computer Interaction & Affective Computing
  • ML for Communications, Networking & Spectrum Management

    Scientific ML & Frontier Topics

  • Physics Informed Neural Networks (PINNs)
  • ML for Scientific Discovery & Engineering
  • Quantum Signal Processing & Quantum Machine Learning
  • Neuro Symbolic AI
  • Multimodal AI Systems
  • Benchmarking, Datasets, Evaluation & Reproducibility

Paper Submission

Authors are invited to submit papers through the conference Submission System by January 24, 2026. Submissions must be original and should not have been published previously or be under consideration for publication while being evaluated for this conference. The proceedings of the conference will be published by The proceedings of the conference will be published by Computer Science Conference Proceedings in Computer Science & Information Technology (CS & IT) series (Confirmed).

Selected papers from SIGML 2026, after further revisions, will be published in the special issue of the following journals.

Important Dates

Submission Deadline: January 24, 2026
Authors Notification: February 21, 2026
Final Manuscript Due: February 28, 2026

Co - Located Event

***** The invited talk proposals can be submitted to sigml@ccseit2026.org


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