Document detail
ID

oai:arXiv.org:2408.12762

Topic
Computer Science - Human-Computer ... Computer Science - Artificial Inte...
Author
Aziz, Memoona Rehman, Umair Safi, Syed Ali Abbasi, Amir Zaib
Category

Computer Science

Year

2024

listing date

9/11/2024

Keywords
image ai human camera-generated alignment visual metrics computational ai-generated images
Metrics

Abstract

The rapid advancements in AI technologies have revolutionized the production of graphical content across various sectors, including entertainment, advertising, and e-commerce.

These developments have spurred the need for robust evaluation methods to assess the quality and realism of AI-generated images.

To address this, we conducted three studies.

First, we introduced and validated a questionnaire called Visual Verity, which measures photorealism, image quality, and text-image alignment.

Second, we applied this questionnaire to assess images from AI models (DALL-E2, DALL-E3, GLIDE, Stable Diffusion) and camera-generated images, revealing that camera-generated images excelled in photorealism and text-image alignment, while AI models led in image quality.

We also analyzed statistical properties, finding that camera-generated images scored lower in hue, saturation, and brightness.

Third, we evaluated computational metrics' alignment with human judgments, identifying MS-SSIM and CLIP as the most consistent with human assessments.

Additionally, we proposed the Neural Feature Similarity Score (NFSS) for assessing image quality.

Our findings highlight the need for refining computational metrics to better capture human visual perception, thereby enhancing AI-generated content evaluation.

Aziz, Memoona,Rehman, Umair,Safi, Syed Ali,Abbasi, Amir Zaib, 2024, Visual Verity in AI-Generated Imagery: Computational Metrics and Human-Centric Analysis

Document

Open

Share

Source

Articles recommended by ES/IODE AI

Visual Verity in AI-Generated Imagery: Computational Metrics and Human-Centric Analysis
image ai human camera-generated alignment visual metrics computational ai-generated images
BDNF Val66Met moderates episodic memory decline and tau biomarker increases in early sporadic Alzheimer’s disease
sporadic tau d = 0 changes neurotrophic bdnf memory val66met csf disease ad decline alzheimer’s
Barriers to early diagnosis of cervical cancer: a mixed-method study in Côte d’Ivoire, West Africa
health study access screening qualitative data women côte d’ivoire cancer cervical diagnosis