Diskussion:Image Processing with MATLAB and AI: Unterschied zwischen den Versionen
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! # !! | ! # !! Date !! Planning for the week !! Progress | ||
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| 1 || | | 1 || 01.01.2026 || | ||
* | * Plan bachelor thesis with Gantt-chart. | ||
* Register to MATLAB Grader. | |||
* Understand requirements and set up SVN. | |||
* Register to | |||
* | |||
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* | * Created Gantt chart (Timeline: Jan–Apr). | ||
* Analyzed requirements and set up development environment. | |||
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| 2 || 08.01.2026 || | |||
* Solve Image Processing Tasks (Restoration & Enhancement). | |||
* Implement Wiener Deconvolution and CLAHE. | |||
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* Implemented '''Wiener Deconvolution (deconvwnr)''' to recover original images from degradation. | |||
* Applied '''CLAHE''' (Contrast-Limited Adaptive Histogram Equalization) to improve visibility. | |||
* Saved results to SVN. | |||
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| 3 || 15.01.2026 || | |||
* Solve Image Processing Tasks (Noise & Segmentation). | |||
* Implement Median Filtering and K-Means. | |||
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* Utilized '''Median Filtering (medfilt2)''' to remove salt-and-pepper noise. | |||
* Applied '''K-Means Clustering (imsegkmeans)''' to partition images based on pixel values. | |||
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| 4 || 22.01.2026 || | |||
* Finalize Classic Algorithms (Model Segmentation & Classification). | |||
* Document progress in Wiki. | |||
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* 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). | |||
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| 5 || 29.01.2026 || | |||
* Research on AI Solutions. | |||
* Literature review on Deep Learning Architectures. | |||
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* Conducted comparative analysis on DL Architectures: | |||
** '''ResNet''' (Standard) | |||
** '''MobileNetV2''' (Edge Efficiency) | |||
** '''EfficientNet''' (Scalability) | |||
** '''Vision Transformers (ViT)''' | |||
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| 6 || 05.02.2026 || | |||
* Implement AI Image Processing (Classification). | |||
* Design CNN architecture. | |||
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* 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.). | |||
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| 7 || 12.02.2026 || | |||
* Research Object Detection (YOLO). | |||
* Data Collection and Labeling. | |||
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* Selected '''YOLOv11''' (Ultralytics) for the LEGO Parts Detection System. | |||
* Collected custom dataset (~400 images). | |||
* Labeled dataset (bounding boxes) for LEGO bricks. | |||
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| 8 || 19.02.2026 || | |||
* Train and Deploy YOLO Model. | |||
* Run inference on test images. | |||
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* '''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. | |||
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Version vom 24. Februar 2026, 07:23 Uhr
| # | Date | Planning for the week | Progress |
|---|---|---|---|
| 1 | 01.01.2026 |
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| 2 | 08.01.2026 |
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| 3 | 15.01.2026 |
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| 4 | 22.01.2026 |
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| 5 | 29.01.2026 |
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| 6 | 05.02.2026 |
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| 7 | 12.02.2026 |
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| 8 | 19.02.2026 |
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