Subtle Motion Blur Detection and Segmentation from Static Image Artworks
Ganesh Samarth, Sibendu Paul, Solale Tabarestani, Caren Chen

TL;DR
This paper introduces SMBlurDetect, a novel framework for detecting and segmenting subtle motion blur in static images, crucial for improving visual quality in digital media and addressing limitations of existing datasets and methods.
Contribution
It presents a new dataset generation pipeline and an end-to-end detector capable of zero-shot, fine-grained motion blur detection with high accuracy and generalization.
Findings
Achieves 89.68% accuracy on GoPro dataset
Reaches 59.77% Mean IoU on CUHK dataset
Demonstrates 6.6x improvement in segmentation accuracy
Abstract
Streaming services serve hundreds of millions of viewers worldwide, where visual assets such as thumbnails, box art, and cover images are critical for engagement. Subtle motion blur remains a pervasive quality issue, reducing visual clarity and negatively affecting user trust and click-through rates. However, motion blur detection from static images is underexplored, as existing methods and datasets focus on severe blur and lack fine-grained pixel-level annotations needed for quality-critical applications. Benchmarks such as GOPRO and NFS are dominated by strong synthetic blur and often contain residual blur in their sharp references, leading to ambiguous supervision. We propose SMBlurDetect, a unified framework combining high-quality motion blur specific dataset generation with an end-to-end detector capable of zero-shot detection at multiple granularities. Our pipeline synthesizes…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Generative Adversarial Networks and Image Synthesis · Visual Attention and Saliency Detection
