icip2022 paper: sahi benchmark on visdrone and xview datasets using fcos, vfnet and tood detectors
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Updated
Jan 17, 2025 - Python
icip2022 paper: sahi benchmark on visdrone and xview datasets using fcos, vfnet and tood detectors
ECCV2018(Challenge-Object Detection in Images)
VisDrone aerial object detection toolkit with 33 models (Torchvision + YOLO), training, evaluation, video inference, benchmarking, and annotation conversion.
Many yolov8 model are trained on the VisDrone dataset.
YOLO-TLP: detected and classified tiny objects with bounding box dimensions smaller than 15 pixels, outperforming other one-stage detectors. maximum resolution for target observation in real-time applications.
Simple implement of CenterNet on VisDrone dataset.
Small Object Detection in Dense UAV Imagery using YOLOv8-L with Structured Ablation (EMA, P2 Head, PIoU) and SAHI Evaluation on VisDrone2019.
dataset or annotation file format conversion
Object Detection on the Visdrone dataset
An end-to-end computer vision system for aerial imagery, implemented and validated on a commercial drone for real-time video inference
Small object detection on VisDrone with YOLOv11s + SAHI
UAV aerial object detection and tracking (YOLOv8n + SORT) on VisDrone Dataset, with ONNX FP32/INT8 export and CPU deployment benchmarking.
Object detection format converter from VisDrone2019-DET to Yolo.
Reproducible VisDrone experiments for adaptive tile budgeting and scale-aware hybrid inference in UAV small-object detection.
Real-time drone traffic object detection and tracking using YOLOv8m, ByteTrack, OpenCV and VisDrone dataset.
Attention-guided object detection on VisDrone using Grad-CAM++ and YOLO, with metrics and visual outputs.
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