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fardman69420's Projects

yolo-fastest icon yolo-fastest

:zap: Based on yolo's ultra-lightweight universal target detection algorithm, the calculation amount is only 250mflops, the ncnn model size is only 666kb, the Raspberry Pi 3b can run up to 15fps+, and the mobile terminal can run up to 178fps+

yolo-fastestv2 icon yolo-fastestv2

:zap: Based on Yolo's low-power, ultra-lightweight universal target detection algorithm, the parameter is only 250k, and the speed of the smart phone mobile terminal can reach ~300fps+

yolo-lite icon yolo-lite

All the trained models used while developing YOLO-LITE

yolo-series icon yolo-series

A series of notebooks describing how to use YOLO (darkflow) in python

yolo-tensorrt icon yolo-tensorrt

TensorRT8.Support Yolov5n,s,m,l,x .darknet -> tensorrt. Yolov4 Yolov3 use raw darknet *.weights and *.cfg fils. If the wrapper is useful to you,please Star it.

yolo-tf icon yolo-tf

TensorFlow implementation of the YOLO (You Only Look Once)

yolo-tf2 icon yolo-tf2

yolo(all versions) implementation in keras and tensorflow 2.x

yolo-v3 icon yolo-v3

Yolo v3 object detection implemented in Tensorflow.

yolo-v5 icon yolo-v5

:art: Pytorch YOLO v5 训练自己的数据集超详细教程!!! :art: (提供PDF训练教程下载)

yolo2 icon yolo2

这个项目是基于论文YOLO9000: Better, Faster, Stronger的keras(backend:tensorflow)实现

yolo2-1 icon yolo2-1

Train YOLOv2 object detector from scratch using Tensorflow.

yolo2_light icon yolo2_light

Light version of convolutional neural network Yolo v3 & v2 for objects detection with a minimum of dependencies (INT8-inference, BIT1-XNOR-inference)

yolo3-4-py icon yolo3-4-py

A Python wrapper on Darknet. Compatible with YOLO V3.

yolo3-keras icon yolo3-keras

这是一个yolo3-keras的源码,可以用于训练自己的模型。

yolo3-pytorch icon yolo3-pytorch

这是一个yolo3-pytorch的源码,可以用于训练自己的模型。

yolo3d icon yolo3d

Implementation of a basic YOLO model for object detection in 3D

yolo3d-yolov4-pytorch icon yolo3d-yolov4-pytorch

YOLO3D: End-to-end real-time 3D Oriented Object Bounding Box Detection from LiDAR Point Cloud (ECCV 2018)

yoloall icon yoloall

YoloAll is a collection of yolo all versions. you you use YoloAll to test yolov3/yolov5/yolox/yolo_fastest

yolobile icon yolobile

This is the implementation of YOLObile: Real-Time Object Detection on Mobile Devices via Compression-Compilation Co-Design

yolodet-pytorch icon yolodet-pytorch

reproduce the YOLO series of papers in pytorch, including YOLOv4, PP-YOLO, YOLOv5,YOLOv3, etc.

yoloface icon yoloface

Deep learning-based Face detection using the YOLOv3 algorithm (https://github.com/sthanhng/yoloface)

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