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Watermark Detection SigLIP2

Developed by prithivMLmods
A vision-language encoding model fine-tuned based on SigLIP2, used for binary image classification to detect whether an image contains a watermark.
Downloads 1,704
Release Time : 4/28/2025

Model Overview

This model is trained using the SiglipForImageClassification architecture, specifically designed to detect the presence of watermarks in images, suitable for scenarios such as content moderation and dataset cleaning.

Model Features

High-precision watermark detection
The model achieves 94.27% accuracy on the test set, effectively distinguishing between watermarked and non-watermarked images.
Based on SigLIP2 architecture
Utilizes the advanced vision-language encoding capabilities of SigLIP2 to enhance understanding of image semantics and feature extraction.
Suitable for high-quality images
Particularly effective for processing clear and high-quality images; not recommended for images with significant noise.

Model Capabilities

Image classification
Watermark detection
Binary classification

Use Cases

Content moderation
Automatically detect watermarked content
Automatically identify and flag watermarked images on image-sharing platforms.
Improves content moderation efficiency and reduces manual review workload.
Dataset cleaning
Filter watermarked images
Automatically remove watermarked images from training datasets to enhance dataset quality.
Improves the purity of data for subsequent model training.
Copyright protection
Digital forensics
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