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https://github.com/YusufB5/ASCILINE.git
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147 lines
7.2 KiB
Markdown
147 lines
7.2 KiB
Markdown
# 🌌 ASCILINE Engine
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**ASCILINE** is a high-performance, real-time ASCII video rendering engine. **Our core objective is to transform the web into a highly dynamic and interactive typographic canvas.** By moving away from traditional video players, ASCILINE streams visual data from a Python backend directly into the browser at **60 FPS** as raw, manipulable text.
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<p align="center">
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<img src="https://github.com/user-attachments/assets/cc38d219-b4d2-4873-82dc-2abb179b5665" width="600" alt="Animation" />
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<br>
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<br>
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<img src="https://github.com/user-attachments/assets/6bd7f5c0-81de-49fe-ba0d-9a8872ec8ae3" width="600" alt="Animation-after" />
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<br>
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<sub><i>* Showcases rendered using Mode 3 (32K Colors) from a 30 FPS source video. The engine naturally synchronizes up to 60+ FPS depending on the source material.</i></sub>
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</p>
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## 🎯 Strategic Vision & Core Capabilities
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1. **Pure Typographic Manipulation**: The visual stream is not a standard media file—it's raw HTML/Canvas text. This makes the impossible possible: you can apply real-time CSS filters (neon glows, text shadows) to a playing video, dynamically manipulate colors, or let users literally copy a moving visual element with their cursor.
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2. **Local AI & LLM Ready**: By reducing complex pixel streams into structured logical strings, ASCILINE acts as a perfect bridge for AI. Instead of feeding heavy computer vision models, lightweight text blocks can be fed directly to Local LLMs. Analyzing visual changes becomes as simple as taking a "diff" between two text strings.
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3. **Ultra-Low Bandwidth & IoT Compatibility**: Standard codecs (H.264/VP9) choke microcontrollers and weak networks. ASCILINE processes the heavy lifting once on the backend, streaming only a few kilobytes of String packets per second via WebSockets. It enables zero-latency live streams on satellite connections, embedded systems, and extreme low-bandwidth environments.
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4. **Bypassing Browser Constraints**: Modern browsers aggressively throttle autoplay videos, and ad-blockers restrict traditional media frames. To the browser, ASCILINE is simply "JavaScript updating text on a page." This circumvents traditional restrictions, allowing for immediate, unblockable visual streams.
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## 🚀 Technical Features
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- **Real-Time ASCII Streaming**: Low-latency video-to-ASCII conversion.
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- **Real-Time pixel Streaming**: Close visual quality to 360p video streaming it uses ▮ characthers.
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- **High Performance**: Uses **HTML5 Canvas** for rendering instead of heavy DOM elements, enabling 60 FPS playback.
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- **Binary Protocol**: Frames are encoded into `Uint8Array` (binary) for efficient bandwidth usage.
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- **Multiple Color Modes**: Supports everything from classic B&W to 16M color ultra-fidelity.
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- **Flexible Video Management**: Supports JSON playlists (per-video mode & volume),
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folder-based auto-queuing (filesystem order), single-file mode, and infinite loop
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playback — all controlled via CLI arguments.
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## 🛠️ Architecture
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1. **Backend (Python/FastAPI)**: Decodes video using OpenCV, maps pixels to ASCII characters via NumPy, and streams binary data.
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2. **Frontend (Vanilla JS)**: Receives binary frames via WebSockets, manages a jitter buffer, and renders to a Canvas grid.
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3. **Communication**: Optimized WebSocket protocol with a custom `INIT` handshake for dynamic resolution/FPS adjustment.
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## 📦 Installation
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### 1. Clone the repository
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```bash
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git clone https://github.com/YusufB5/ASCILINE.git
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cd ASCILINE
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```
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### 2. Install dependencies
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```bash
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pip install fastapi uvicorn opencv-python numpy websockets
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```
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### 3. Run the Web Server
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**Single video:**
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```bash
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python stream_server.py video.mp4
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```
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**Folder mode — drop your videos into `videos/` and run:**
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```bash
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python stream_server.py --folder videos
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python stream_server.py --folder videos --loop # infinite loop
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python stream_server.py --folder videos --mode 5 --vol 2 # all videos same settings
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```
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Videos play in **filesystem order** (top to bottom as they appear in the folder, not alphabetically). Just add/remove files from the `videos/` folder to control the queue.
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**JSON Playlist — full control per video:**
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```bash
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python stream_server.py --playlist playlist.json
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python stream_server.py --playlist playlist.json --loop
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```
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Use `playlist.json` when you need different `--mode` or `--vol` settings for each video.
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Open `http://localhost:8000` in your browser.
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### 4. Run directly in Terminal (Standalone)
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If you prefer to bypass the web interface, you can render the video directly inside an ANSI-supported terminal (zero-flicker, true color):
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```bash
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python ascii_video_player2.py video.mp4 --quality 0
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```
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## 🎨 Customization
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You can easily customize the look and feel of the engine:
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### Styling
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Edit `style.css` to change the accent colors and typography using CSS variables:
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```css
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:root {
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--accent-color: #00ff41; /* Classic Matrix Green */
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--bg-color: #050505;
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}
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```
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### Rendering Modes
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The engine supports different fidelity levels via the `--mode` flag:
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- `1`: Black & White (DOM mode)
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- `2`: 512 Colors
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- `3`: 32K Colors
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- `4`: 262K Colors
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- `5`: 16M Colors (Ultra)
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```bash
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python stream_server.py --mode 5 --cols 240 --rows 100
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```
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### 📐 Resolution & Auto-Scaling
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By default, you only need to specify the width (`--cols`). ASCILINE will automatically calculate the correct `--rows` based on the source video's aspect ratio to prevent stretching.
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- **ASCII Mode Recommended:** `--cols 200` to `--cols 240` (Best balance of text detail and 30-40 FPS performance).
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- **Pixel Mode Recommended:** `--cols 320` to `--cols 400` (Extremely fast, easily hits 60+ FPS,close to 360p video stream).
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python stream_server.py video.mp4 --mode 5 --cols 240
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# Terminal will show: [AUTO] 1920x1080 → grid 240x67
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### Server-Side Volume Control
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Volume is controlled at the server level via the `--vol` flag (scale 0–5).
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When set to `0`, the audio engine (FFmpeg) **never runs**, saving CPU and bandwidth.
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| `--vol` | FFmpeg Multiplier | Description |
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|---------|------------------|-------------|
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| `0` | — | Muted (no processing) |
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| `1` | 1.0× | Normal (default) |
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| `3` | 1.5× | Loud |
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| `5` | 2.0× | Double volume |
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```bash
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python stream_server.py video.mp4 --vol 0 # Silent
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python stream_server.py video.mp4 --vol 3 # Loud
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```
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### Playlist Format (`playlist.json`)
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Each entry can override the global `--mode` and `--vol` defaults:
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```json
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[
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{ "video": "intro.mp4", "mode": 1, "vol": 1 },
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{ "video": "main.mp4", "mode": 5, "vol": 3 },
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{ "video": "outro.mp4", "mode": 3, "vol": 2 }
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]
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```
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Video paths are resolved automatically — the engine checks the project root and the `videos/` subfolder, so you can write just the filename.
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## 📜 License & Ethical Guardrails
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**MIT License (with Anti-Ad Restriction)**
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ASCILINE is distributed under the MIT License, but with a strict ethical guardrail.
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Because this engine bypasses standard browser constraints and ad-blockers (by rendering pure text instead of video), we strictly prohibit its use by ad-networks to serve unblockable advertisements.
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See the [LICENSE](LICENSE) file for the full text, which includes the **ANTI-ADVERTISEMENT RESTRICTION** clause.
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