Pet Videos Dataset
Home » Case Study » Pet Videos Dataset
Project Overview:
Objective
The “Pet Videos Dataset” project aims to create a complete dataset for training machine learning models. Our goal is to provide a useful resource that helps develop AI models for recognizing and analyzing pet videos. This dataset has many uses, such as pet behavior analysis, veterinary diagnostics, and creating pet-related content.
Scope
Our project involves the careful collection of pet videos from various sources. We then annotate these videos with relevant information, which helps train AI models. As a result, these models can accurately recognize and understand pet behaviors, species, and activities.
Sources
- User Contributions: Enthusiastic pet owners and animal lovers from around the world have generously shared their pet videos to enrich our dataset.
- Publicly Available Pet Video Datasets: Moreover, we have accessed publicly available pet video datasets to supplement our collection with a wide variety of pet species, breeds, and scenarios.
- Licensed Content: Additionally, we’ve collaborated with content creators, pet influencers, and pet-centric platforms to obtain licensed pet videos. This ensures a well-rounded and authentic representation of pet behaviors.
Data Collection Metrics
- Total Pet Videos Collected: Over 25,000 pet videos
- User Contributions: 15,000 videos
- Public Datasets: 7,000 videos
- Licensed Content: 3,000 videos
Annotation Process
Stages
- Behavior Recognition: We have marked each video to show specific pet actions like playing, eating, grooming, and more.
- Species and Breed Recognition: Our notes include the pet species (dogs, cats, birds, etc.) and, when possible, their breeds.
- Contextual Information: The notes also capture details like whether the setting is indoors or outdoors, the time of day, and if there are other animals or humans present.
Annotation Metrics
- Pet Videos with Behavior Annotations: 25,000 videos
- Species and Breed Annotations: 20,000 annotations
- Contextual Information Annotations: 15,000 annotations
Quality Assurance
Stages
- Annotation Verification: We have set up a strict review process, which includes experts in pet behavior, to check and confirm the accuracy of our labels.
- Data Quality Control: We have put in a lot of effort to remove low-quality or noisy videos from our dataset. This ensures that the data is clean and trustworthy.
- Data Security and Privacy: We follow strict data security rules to keep pet-related information safe. Also, we make sure any personal data is anonymized, and we always get permission when needed.
QA Metrics
- Annotation Validation Cases: Review of 10,000 video annotations by pet behavior experts to confirm accuracy.
- Data Cleansing: Removal of 2,000 low-quality or noisy videos from the dataset to maintain high data integrity.
- Verification Rate: 95% of the annotations undergo a verification process to ensure they accurately represent the depicted behaviors and species.
Conclusion
The “Pet Videos Dataset” is a testament to our commitment to offering high-quality data for machine learning applications. For example, with extensive annotations and a diverse collection of pet videos, this dataset empowers AI models to excel in recognizing and understanding pet behaviors, species, and contexts. Additionally, whether you’re working on pet-related applications or exploring the fascinating world of animal behavior analysis, our dataset is a valuable resource that opens up exciting possibilities.
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.