PIPBench:面向个性化图像生成的包含用户画像评估框架 / PIPBench: A Profile-Inclusive Framework for Personalized Image Generation Evaluation
1️⃣ 一句话总结
本文提出了首个名为PIPBench的基准测试框架,通过结合用户的心理和人口统计画像,来系统评估AI模型能否根据用户少量的历史偏好图片生成符合其个人审美风格的图像,并揭示现有模型在此类个性化任务中的关键不足。
Recent text-to-image models such as DALLE-3 excel at following diverse prompts yet remain blind to individual aesthetic preferences. We study personalized image generation, where models must align outputs with a user's implicit visual preferences based on a few historically preferred images and a short prompt. To this end, we introduce PIPBench, the first profile-inclusive benchmark for evaluating personalized image generation. We further propose a novel data construction pipeline that leverages psychological and demographic profiling dimensions for both real-user data collection and scalable agent-based data generation. Using PIPBench, we conduct a thorough evaluation of representative line of methods. Our experiments reveal key limitations in existing methods, suggesting new challenges and opportunities for personalized text-to-image synthesis. Project page: this https URL
PIPBench:面向个性化图像生成的包含用户画像评估框架 / PIPBench: A Profile-Inclusive Framework for Personalized Image Generation Evaluation
本文提出了首个名为PIPBench的基准测试框架,通过结合用户的心理和人口统计画像,来系统评估AI模型能否根据用户少量的历史偏好图片生成符合其个人审美风格的图像,并揭示现有模型在此类个性化任务中的关键不足。
源自 arXiv: 2607.06440