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**Update: Edited & AI-Generated Content Detection β Project Plan** | |
### π Phase 1: Rule-Based Image Detection (In Progress) | |
We're implementing three core techniques to individually flag edited or AI-generated images: | |
* **ELA (Error Level Analysis):** Highlights inconsistencies via JPEG recompression. | |
* **FFT (Frequency Analysis):** Uses 2D Fourier Transform to detect unnatural image frequency patterns. | |
* **Metadata Analysis:** Parses EXIF data to catch clues like editing software tags. | |
These give us visual + interpretable results for each image, and currently offer \~60β70% accuracy on typical AI-edited content. | |
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### Phase 2: AI vs Human Detection System (Coming Soon) | |
**Goal:** Build an AI model that classifies whether content is AI- or human-made β initially focusing on **images**, and later expanding to **text**. | |
**Data Strategy:** | |
* Scraping large volumes of recent AI-gen images (e.g. SDXL, Gibbli, MidJourney). | |
* Balancing with high-quality human images. | |
**Model Plan:** | |
* Use ELA, FFT, and metadata as feature extractors. | |
* Feed these into a CNN or ensemble model. | |
* Later, unify into a full web-based platform (upload β get AI/human probability). | |