Side Profile Tires Dataset
Home » Dataset Download » Side Profile Tires Dataset
Side Profile Tires Dataset
Datasets
Side Profile Tires Dataset
File
Side Profile Tires Dataset
Use Case
Side Profile Tires
Description
Access a meticulously labeled Side Profile Tires dataset for image segmentation. Perfect for AI applications in the automotive industry.
Description:
This dataset consists of meticulously annotated images of tire side profiles, specifically designed for image segmentation tasks. Each tire has been manually labeled to ensure high accuracy, making this dataset ideal for training machine learning models focused on tire detection, classification, or related automotive applications.
The annotations are provided in the YOLO v5 format, leveraging the PyTorch framework for deep learning applications. The dataset offers a robust foundation for researchers and developers working on object detection, autonomous vehicles, quality control, or any project requiring precise tire identification from images.
Download Dataset
Data Collection and Labeling Process:
- Manual Labeling: Every tire in the dataset has been individually labeled to guarantee that the annotations are highly precise, significantly reducing the margin of error in model training.
- Annotation Format: YOLO v5 PyTorch format, a highly efficient and widely used format for real-time object detection systems.
Pre-processing Applied:
- Auto-orientation: Pixel data has been automatically oriented, and EXIF orientation metadata has been stripped to ensure uniformity across all images, eliminating issues related to image orientation during processing.
- Resizing: All images have been resized to 416×416 pixels using stretching to maintain compatibility with common object detection frameworks like YOLO. This resizing standardizes the image input size while preserving visual integrity.
Applications:
- Automotive Industry: This dataset is suitable for automotive-focused AI models, including tire quality assessment, tread pattern recognition, and autonomous vehicle systems.
- Surveillance and Security: Use cases in monitoring systems where identifying tires is crucial for vehicle recognition in parking lots or traffic management systems.
- Manufacturing and Quality Control: Can be used in tire manufacturing processes to automate defect detection and classification.
Dataset Composition:
- Number of Images: [Add specific number]
- File Format: JPEG/PNG
- Annotation Format: YOLO v5 PyTorch
- Image Size: 416×416 (standardized across all images)
Contact Us
Quality Data Creation
Guaranteed TAT
ISO 9001:2015, ISO/IEC 27001:2013 Certified
HIPAA Compliance
GDPR Compliance
Compliance and Security
Let's Discuss your Data collection Requirement With Us
To get a detailed estimation of requirements please reach us.