Daliang (Dliang110)

Dliang110

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Daliang's repositories

ObjectTracking

An object tracking for humans 🔬

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Object-detection-converts

Objects365/COCO数据集转换为xml格式,并转为yolo的txt格式,xml数据统计更改

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YOLOv5_DOTA_OBB

YOLOv5 in DOTA with CSL_label.(Oriented Object Detection)(Rotation Detection)(Rotated BBox)基于YOLOv5的旋转目标检测

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UAV-ROD

A benchmark of UAV-ROD dataset.

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SA-Net

Code for our ICASSP 2021 paper: SA-Net: Shuffle Attention for Deep Convolutional Neural Networks

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RDIoU

Repulsion DIoU Loss Function for Reducing False Positive Rates in Crowd Detection

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centernet-visdrone

Simple implement of CenterNet on VisDrone dataset.

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yolov5_deepsort

A multi-task(detection, tracking, dense estimation, object counting) frame-work based on yolov5+deepsort

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involution_pytorch

Unofficial implementation of the Involution operation from CVPR 2021

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MSAD

Multi-Scale Aligned Distillation for Low-Resolution Detection (CVPR2021)

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groomed_nms

Official PyTorch Code of GrooMeD-NMS: Grouped Mathematically Differentiable NMS for Monocular 3D Object Detection (CVPR 2021)

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halonet-pytorch

Implementation of the 😇 Attention layer from the paper, Scaling Local Self-Attention For Parameter Efficient Visual Backbones

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OD_Confluence

The replacement of traditional NMS post-processing method in object detection 目标检测中替代传统NMS的后处理方式

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PyTorch-Spiking-YOLOv3

A PyTorch implementation of Spiking-YOLOv3. Two branches are provided, based on two common PyTorch implementation of YOLOv3(ultralytics/yolov3 & eriklindernoren/PyTorch-YOLOv3), with support for Spiking-YOLOv3-Tiny at present.

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image_retrieval_platform

This is an simple image retrieval platform by CNN based on pytorch and flask.

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Corner-and-Feature-Detection-Matching

An assignment for Computer Vision where I programmed Hough Lines, Harris Corner Detection, and SIFT algorithms from scratch.

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GFocalV2

Generalized Focal Loss V2: Learning Reliable Localization Quality Estimation for Dense Object Detection, CVPR2021

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data-augmentation

Data Augmentation for Object Detection with Python and OpenCV

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pyncnn

python wrapper of ncnn with pybind11

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Homography-Object_detection

Homography is technique involving mapping one image to another based on their corresponding related good features . In this project, we can find out the given image from the video feed provided real-time. This project involves feature detection using SIFT algorithm and images are matched by FLANN and K- Nearest Neighbor Technique

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insightface

Face Analysis Project on MXNet

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pytorch_face_landmark

Fast and accurate face landmark detection library using PyTorch; Support 68-point semi-frontal and 39-point profile landmark detection; Support both coordinate-based and heatmap-based inference; Up to 100 FPS landmark inference speed with SOTA face detector on CPU.

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Feature-Detection-Description-Matching-and-Natural-AR-of-Images

Used Spyder tool and Python to detect, describe and visualize Scale-Invariant Feature Transform features of images.

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MobileNet-YOLO

A caffe implementation of MobileNet-YOLO detection network

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SIFT-algorithm-image-matcher

PURPOSE to Understand SIFT through video subject matching Present code require video device to be connected to computer eg-WebCam Capture Test Image to match with other images Good Matches will be represented through images graphs and its numeric count in console

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