Diskussion:Image Processing with MATLAB and AI: Unterschied zwischen den Versionen

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Ajay.paul@stud.hshl.de (Diskussion | Beiträge)
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Ajay.paul@stud.hshl.de (Diskussion | Beiträge)
Keine Bearbeitungszusammenfassung
 
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* Trained the model on the custom LEGO dataset.
* Trained the model on the custom LEGO dataset.
* Successfully ran inference: The system automatically identifies and classifies LEGO bricks in new images.
* Successfully ran inference: The system automatically identifies and classifies LEGO bricks in new images.
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| 10 || 02.03.2026 ||
* Research Deep Learning Architectures
* Comparative Analysis of:
** ResNet (Standard)
** MobileNetV2 (Edge Efficiency)
** EfficientNet (Scalability)
** Vision Transformers (ViT)
||
* [To Do] Review key literature for selected architectures.
* [To Do] Create a comparison matrix (Accuracy vs. Parameters vs. Speed).
* [To Do] Draft the "State of the Art" chapter justifying the choice of YOLO/CNN over these architectures.
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Aktuelle Version vom 25. Februar 2026, 18:34 Uhr

# Date Planning for the week Progress
1 01.01.2026
  • Plan bachelor thesis with Gantt-chart.
  • Register to MATLAB Grader.
  • Understand requirements and set up SVN.
  • Created Gantt chart (Timeline: Jan–Apr).
  • Analyzed requirements and set up development environment.
2 08.01.2026
  • Solve Image Processing Tasks (Restoration & Enhancement).
  • Implement Wiener Deconvolution and CLAHE.
  • Implemented Wiener Deconvolution (deconvwnr) to recover original images from degradation.
  • Applied CLAHE (Contrast-Limited Adaptive Histogram Equalization) to improve visibility.
  • Saved results to SVN.
3 15.01.2026
  • Solve Image Processing Tasks (Noise & Segmentation).
  • Implement Median Filtering and K-Means.
  • Utilized Median Filtering (medfilt2) to remove salt-and-pepper noise.
  • Applied K-Means Clustering (imsegkmeans) to partition images based on pixel values.
4 22.01.2026
  • Finalize Classic Algorithms (Model Segmentation & Classification).
  • Document progress in Wiki.
  • Implemented Active Contours (Snakes) for specific object isolation.
  • Developed Rule-Based Shape Analysis (regionprops) to classify objects (e.g., Square vs. Circle) without ML.
  • Completed Task 1 (Classic Algorithms).
5 29.01.2026
  • Research on AI Solutions.
  • Literature review on Deep Learning Architectures.
  • Conducted comparative analysis on DL Architectures:
    • ResNet (Standard)
    • MobileNetV2 (Edge Efficiency)
    • EfficientNet (Scalability)
    • Vision Transformers (ViT)
6 05.02.2026
  • Implement AI Image Processing (Classification).
  • Design CNN architecture.
  • Designed a **Sequential CNN** with a convolutional base and dense classification layer.
  • Successfully classified low-resolution color images into 10 distinct classes (airplanes, birds, etc.).
7 12.02.2026
  • Research Object Detection (YOLO).
  • Data Collection and Labeling.
  • Selected YOLOv11 (Ultralytics) for the LEGO Parts Detection System.
  • Collected custom dataset (~400 images).
  • Labeled dataset (bounding boxes) for LEGO bricks.
8 19.02.2026
  • Train and Deploy YOLO Model.
  • Run inference on test images.
  • Implemented the YOLOv11 Model using Google Colab and NVIDIA GPU acceleration.
  • Trained the model on the custom LEGO dataset.
  • Successfully ran inference: The system automatically identifies and classifies LEGO bricks in new images.
10 02.03.2026
  • Research Deep Learning Architectures
  • Comparative Analysis of:
    • ResNet (Standard)
    • MobileNetV2 (Edge Efficiency)
    • EfficientNet (Scalability)
    • Vision Transformers (ViT)
  • [To Do] Review key literature for selected architectures.
  • [To Do] Create a comparison matrix (Accuracy vs. Parameters vs. Speed).
  • [To Do] Draft the "State of the Art" chapter justifying the choice of YOLO/CNN over these architectures.