Towards Smart Point-and-Shoot Photography
Jiawan Li, Fei Zhou, Zhipeng Zhong, Jiongzhi Lin, Guoping Qiu

TL;DR
This paper introduces a novel smart point-and-shoot photography system that guides users to improve photo composition through live camera pose adjustments, utilizing a large dataset and innovative models for quality assessment and pose recommendation.
Contribution
It presents a first-of-its-kind SPAS system with a CLIP-based composition assessment and a mixture-of-experts pose adjustment model, advancing automated photo composition guidance.
Findings
High accuracy in composition quality assessment
Effective camera pose adjustment suggestions
Demonstrated improvements on public datasets
Abstract
Hundreds of millions of people routinely take photos using their smartphones as point and shoot (PAS) cameras, yet very few would have the photography skills to compose a good shot of a scene. While traditional PAS cameras have built-in functions to ensure a photo is well focused and has the right brightness, they cannot tell the users how to compose the best shot of a scene. In this paper, we present a first of its kind smart point and shoot (SPAS) system to help users to take good photos. Our SPAS proposes to help users to compose a good shot of a scene by automatically guiding the users to adjust the camera pose live on the scene. We first constructed a large dataset containing 320K images with camera pose information from 4000 scenes. We then developed an innovative CLIP-based Composition Quality Assessment (CCQA) model to assign pseudo labels to these images. The CCQA introduces a…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Advanced Vision and Imaging · Computer Graphics and Visualization Techniques
