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Home >Courses >Smart Sensors: 1D-CNNs and Signal Processing for Spectroscopy

01/25/2026

Registration closes 01/25/2026
Mentor Based

Smart Sensors: 1D-CNNs and Signal Processing for Spectroscopy

Enhancing Spectral Analysis: AI-Powered 1D-CNNs for Classification and Denoising

  • Mode: Virtual / Online
  • Type: Mentor Based
  • Level: Advanced
  • Duration: 3 Days (60-90 Minutes each day)
  • Starts: 25 January 2026
  • Time: 5: 30PM IST

About This Course

Smart Sensors: 1D-CNNs and Signal Processing for Spectroscopy teaches AI-driven techniques to enhance Raman, Fluorescence, and IR spectroscopy. Learn to use 1D-CNNs for classification, denoising, and spectral preprocessing, improving data quality for trace detection. Ideal for researchers in chemical sensing, biotech, and environmental monitoring, this hands-on workshop provides tools for advanced spectral analysis.

Aim

To equip researchers with AI-driven techniques using 1D-CNNs and signal processing to enhance spectral data analysis, improving classification, denoising, and trace detection in Raman, Fluorescence, and IR spectroscopy.

Workshop Objectives

  • Classify Spectra with 1D-CNNs for enhanced accuracy.
  • Denoise Spectral Data using AI techniques for better trace detection.
  • Optimize Preprocessing with methods like baseline correction and data augmentation.
  • Automate Feature Extraction from spectral data.
  • Enhance Sensor Data Analysis in chemical sensing, biotech, and environmental monitoring.

Workshop Structure

📅 Day 1 — Spectral Preprocessing & Augmentation

  • Lecture: Overview of spectral data cleaning—baseline correction, smoothing, and the importance of data augmentation for improving model robustness.
  • Lab: Hands-on experience with Python (scipy.signal) to preprocess raw Raman/Fluorescence spectra and apply augmentation techniques like synthetic noise and shifts.
  • Deliverable: Preprocessed, augmented spectral dataset ready for deep learning model training and analysis.

📅 Day 2 — 1D-Convolutional Neural Networks (CNNs) for Spectral Classification

  • Lecture: Understanding the advantages of 1D-CNNs over traditional PCA for spectral classification. Learn how CNNs can automatically extract spectral features (e.g., peaks, shoulders) without manual intervention.
  • Lab: Practical session on training a 1D-CNN to classify spectral data, such as Acidic vs. Basic or Toxin Present vs. Absent, using raw spectral fingerprints.
  • Deliverable: Trained 1D-CNN model capable of classifying spectral data based on learned features.

📅 Day 3 — Denoising Autoencoders for Spectral Data Enhancement

  • Lecture: Introduction to super-resolution for spectroscopy. Learn how Autoencoders can be applied to remove noise and reconstruct high-fidelity signals from low-quality spectra.
  • Lab: Hands-on training on using Autoencoders to denoise spectra and reconstruct clean data for trace detection applications in spectroscopy.
  • Deliverable: Trained Autoencoder model that enhances noisy spectra, improving detection limits and data quality.

Who Should Enrol?

  • Doctoral Scholars & Researchers: PhD candidates seeking to integrate computational workflows into their molecular research.
  • Postdoctoral Fellows: Early-career scientists aiming to enhance their data-driven publication profile.
  • University Faculty: Professors and HODs interested in modern bioinformatics pedagogy and tool mastery.
  • Industry Scientists: R&D professionals from the Biotechnology and Pharmaceutical sectors transitioning to genomic-driven discovery.
  • Postgraduate Students: Final-year PG students looking for specialized research-grade exposure beyond standard curricula.

Important Dates

Registration Ends

12/27/2025
IST 4:30 PM

Workshop Dates

01/25/2026 – 01/27/2026
IST 5: 30PM

Workshop Outcomes

  • Expertise in 1D-CNNs for spectral classification.
  • Ability to denoise spectral data for precise trace detection.
  • Mastery of spectral preprocessing and data augmentation techniques.
  • Skills in automated feature extraction from spectral data.
  • Advanced capability in sensor data analysis across chemical sensing, biotech, and environmental monitoring.

Fee Structure

Student

₹2499 | $75

Ph.D. Scholar / Researcher

₹3499 | $85

Academician / Faculty

₹4499 | $105

Industry Professional

₹6499 | $120

What You’ll Gain

  • Live & recorded sessions
  • e-Certificate upon completion
  • Post-workshop query support
  • Hands-on learning experience

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