Veri Setinizi Yolov5 Formatına Dönüştürün

Overview

Veri Setinizi Yolov5 Formatına Dönüştürün!

Bu Repo da Neler Var?

  • Xml Formatındaki Veri Setini .Txt Formatına Çevirme
  • Xml Formatındaki Dosyaları Silme
  • Veri Setinizi Yolov5 Formatına Göre Bölme
  • Veri Setini Train,Test ve Val Şekilde Bölme
  • Veri Setini train: %80, test: %10, val: %10 Ayırma

Örnek Format:

datasets/ 

      images/
    
          train
            img_000.jpg
            ...
            img_999.jpg 
            
          val
           img_000.jpg
           ...
           img_999.jpg 
           
      labels/
          
          train
            img_000.txt
            ...
            img_999.txt 

          val
            img_000.txt
            ...
            img_999.txt
Owner
Kadir Nar
Kadir Nar
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