# YOLOv8 - Int8-TFLite Runtime Welcome to the YOLOv8 Int8 TFLite Runtime for efficient and optimized object detection project. This README provides comprehensive instructions for installing and using our YOLOv8 implementation. ## Installation Ensure a smooth setup by following these steps to install necessary dependencies. ### Installing Required Dependencies Install all required dependencies with this simple command: ```bash pip install -r requirements.txt ``` ### Installing `tflite-runtime` To load TFLite models, install the `tflite-runtime` package using: ```bash pip install tflite-runtime ``` ### Installing `tensorflow-gpu` (For NVIDIA GPU Users) Leverage GPU acceleration with NVIDIA GPUs by installing `tensorflow-gpu`: ```bash pip install tensorflow-gpu ``` **Note:** Ensure you have compatible GPU drivers installed on your system. ### Installing `tensorflow` (CPU Version) For CPU usage or non-NVIDIA GPUs, install TensorFlow with: ```bash pip install tensorflow ``` ## Usage Follow these instructions to run YOLOv8 after successful installation. Convert the YOLOv8 model to Int8 TFLite format: ```bash yolo export model=yolov8n.pt imgsz=640 format=tflite int8 ``` Locate the Int8 TFLite model in `yolov8n_saved_model`. Choose `best_full_integer_quant` or verify quantization at [Netron](https://netron.app/). Then, execute the following in your terminal: ```bash python main.py --model yolov8n_full_integer_quant.tflite --img image.jpg --conf-thres 0.5 --iou-thres 0.5 ``` Replace `best_full_integer_quant.tflite` with your model file's path, `image.jpg` with your input image, and adjust the confidence (conf-thres) and IoU thresholds (iou-thres) as necessary. ### Output The output is displayed as annotated images, showcasing the model's detection capabilities: ![image](https://github.com/wamiqraza/Attribute-recognition-and-reidentification-Market1501-dataset/blob/main/img/bus.jpg)