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text-2-video-human-preferences-luma-ray2

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魔搭社区2025-11-07 更新2025-02-15 收录
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https://modelscope.cn/datasets/Rapidata/text-2-video-human-preferences-luma-ray2
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<style> .vertical-container { display: flex; flex-direction: column; gap: 60px; } .image-container img { height: 150px; /* Set the desired height */ margin:0; object-fit: contain; /* Ensures the aspect ratio is maintained */ width: auto; /* Adjust width automatically based on height */ } .image-container { display: flex; /* Aligns images side by side */ justify-content: space-around; /* Space them evenly */ align-items: center; /* Align them vertically */ } .container { width: 90%; margin: 0 auto; } .text-center { text-align: center; } .score-amount { margin: 0; margin-top: 10px; } .score-percentage { font-size: 12px; font-weight: semi-bold; } </style> # Rapidata Video Generation Luma Ray2 Human Preference <a href="https://www.rapidata.ai"> <img src="https://cdn-uploads.huggingface.co/production/uploads/66f5624c42b853e73e0738eb/jfxR79bOztqaC6_yNNnGU.jpeg" width="300" alt="Dataset visualization"> </a> <a href="https://huggingface.co/datasets/Rapidata/text-2-image-Rich-Human-Feedback"> </a> <p> If you get value from this dataset and would like to see more in the future, please consider liking it. </p> This dataset was collected in ~1 hour total using the [Rapidata Python API](https://docs.rapidata.ai), accessible to anyone and ideal for large scale data annotation. # Overview In this dataset, ~45'000 human annotations were collected to evaluate Luma's Ray 2 video generation model on our benchmark. The up to date benchmark can be viewed on our [website](https://www.rapidata.ai/leaderboard/video-models). The benchmark data is accessible on [huggingface](https://huggingface.co/datasets/Rapidata/text-2-video-human-preferences) directly. # Explanation of the colums The dataset contains paired video comparisons. Each entry includes 'video1' and 'video2' fields, which contain links to downscaled GIFs for easy viewing. The full-resolution videos can be found [here](https://huggingface.co/datasets/Rapidata/text-2-video-human-preferences/tree/main/Videos). The weighted_results column contains scores ranging from 0 to 1, representing aggregated user responses. Individual user responses can be found in the detailedResults column. # Alignment The alignment score quantifies how well an video matches its prompt. Users were asked: "Which video fits the description better?". ## Examples <div class="vertical-container"> <div class="container"> <div class="text-center"> <q>A lone kayaker paddles through calm, reflecting waters under a vibrant sunset, the sky painted with hues of orange and pink, creating a serene and mesmerizing evening scene.</q> </div> <div class="image-container"> <div> <h3 class="score-amount">Ray 2 </h3> <div class="score-percentage">(Score: 91.56%)</div> <img src="https://assets.rapidata.ai/0046_ray2_1.gif" width=500> </div> <div> <h3 class="score-amount">Hunyuan </h3> <div class="score-percentage">(Score: 8.44%)</div> <img src="https://assets.rapidata.ai/0046_hunyuan_1724.gif" width=500> </div> </div> </div> <div class="container"> <div class="text-center"> <q>A sunset view over a bustling Tokyo street, neon lights flickering as crowds weave through the vibrant night. Capture reflections on wet pavement and the dynamic energy of city life as day transitions to night.</q> </div> <div class="image-container"> <div> <h3 class="score-amount">Ray 2 </h3> <div class="score-percentage">(Score: 2.83%)</div> <img src="https://assets.rapidata.ai/0063_ray2_1.gif" width=500> </div> <div> <h3 class="score-amount">Sora </h3> <div class="score-percentage">(Score: 97.17%)</div> <img src="https://assets.rapidata.ai/0063_sora_1.gif" width=500> </div> </div> </div> </div> # Coherence The coherence score measures whether the generated video is logically consistent and free from artifacts or visual glitches. Without seeing the original prompt, users were asked: "Which video is logically more coherent? E.g. the video where physics are less violated and the composition makes more sense." ## Examples <div class="vertical-container"> <div class="container"> <div class="image-container"> <div> <h3>Ray 2 </h3> <div class="score-percentage">(Score: 90.42%)</div> <img src="https://assets.rapidata.ai/0098_ray2_1.gif" width="500" alt="Dataset visualization"> </div> <div> <h3>Pika </h3> <div class="score-percentage">(Score: 9.58%)</div> <img src="https://assets.rapidata.ai/0098_pika_2445694862.gif" width="500" alt="Dataset visualization"> </div> </div> </div> <div class="container"> <div class="image-container"> <div> <h3>Ray 2 </h3> <div class="score-percentage">(Score: 4.11%)</div> <img src="https://assets.rapidata.ai/0086_ray2_2.gif" width="500" alt="Dataset visualization"> </div> <div> <h3>Pika </h3> <div class="score-percentage">(Score: 95.89%)</div> <img src="https://assets.rapidata.ai/0086_pika_1678426151.gif" width="500" alt="Dataset visualization"> </div> </div> </div> </div> # Preference The preference score reflects how visually appealing participants found each video, independent of the prompt. Users were asked: "Which video do you prefer aesthetically?" ## Examples <div class="vertical-container"> <div class="container"> <div class="image-container"> <div> <h3>Ray 2 </h3> <div class="score-percentage">(Score: 61.12%)</div> <img src="https://assets.rapidata.ai/0036_ray2_1.gif" width="500" alt="Dataset visualization"> </div> <div> <h3>Sora </h3> <div class="score-percentage">(Score: 38.88%)</div> <img src="https://assets.rapidata.ai/0036_sora_1.gif" width="500" alt="Dataset visualization"> </div> </div> </div> <div class="container"> <div class="image-container"> <div> <h3>Ray 2 </h3> <div class="score-percentage">(Score: 39.48%)</div> <img src="https://assets.rapidata.ai/0020_ray2_2.gif" width="500" alt="Dataset visualization"> </div> <div> <h3>Hunyuan </h3> <div class="score-percentage">(Score: 60.52%)</div> <img src="https://assets.rapidata.ai/0020_hunyuan_1724.gif" width="500" alt="Dataset visualization"> </div> </div> </div> </div> </br> # About Rapidata Rapidata's technology makes collecting human feedback at scale faster and more accessible than ever before. Visit [rapidata.ai](https://www.rapidata.ai/) to learn more about how we're revolutionizing human feedback collection for AI development. # Other Datasets We run a benchmark of the major image generation models, the results can be found on our [website](https://www.rapidata.ai/leaderboard/image-models). We rank the models according to their coherence/plausiblity, their aligment with the given prompt and style prefernce. The underlying 2M+ annotations can be found here: - Link to the [Rich Video Annotation dataset](https://huggingface.co/datasets/Rapidata/text-2-video-Rich-Human-Feedback) - Link to the [Coherence dataset](https://huggingface.co/datasets/Rapidata/Flux_SD3_MJ_Dalle_Human_Coherence_Dataset) - Link to the [Text-2-Image Alignment dataset](https://huggingface.co/datasets/Rapidata/Flux_SD3_MJ_Dalle_Human_Alignment_Dataset) - Link to the [Preference dataset](https://huggingface.co/datasets/Rapidata/700k_Human_Preference_Dataset_FLUX_SD3_MJ_DALLE3) We have also colleted a [rich human feedback dataset](https://huggingface.co/datasets/Rapidata/text-2-image-Rich-Human-Feedback), where we annotated an alignment score of each word in a prompt, scored coherence, overall aligment and style preferences and finally annotated heatmaps of areas of interest for those images with low scores.

<style> .vertical-container { display: flex; flex-direction: column; gap: 60px; } .image-container img { height: 150px; /* Set the desired height */ margin:0; object-fit: contain; /* Ensures the aspect ratio is maintained */ width: auto; /* Adjust width automatically based on height */ } .image-container { display: flex; /* Aligns images side by side */ justify-content: space-around; /* Space them evenly */ align-items: center; /* Align them vertically */ } .container { width: 90%; margin: 0 auto; } .text-center { text-align: center; } .score-amount { margin: 0; margin-top: 10px; } .score-percentage { font-size: 12px; font-weight: semi-bold; } </style> # Rapidata 视频生成 Luma Ray2 人类偏好数据集 <a href="https://www.rapidata.ai"> <img src="https://cdn-uploads.huggingface.co/production/uploads/66f5624c42b853e73e0738eb/jfxR79bOztqaC6_yNNnGU.jpeg" width="300" alt="Dataset visualization"> </a> <a href="https://huggingface.co/datasets/Rapidata/text-2-image-Rich-Human-Feedback"> </a> <p>若您从本数据集获益并希望后续获取更多同类资源,不妨为其点赞。</p> 本数据集总计耗时约1小时,通过[Rapidata Python API](https://docs.rapidata.ai)完成采集,该工具面向所有用户开放,非常适合大规模数据标注工作。 # 数据集概览 本数据集共采集约45000条人类标注结果,用于在我们的基准测试中评估Luma的Ray2视频生成模型。最新版基准测试可通过我们的[官网](https://www.rapidata.ai/leaderboard/video-models)查看,基准测试数据可直接在[Hugging Face](https://huggingface.co/datasets/Rapidata/text-2-video-human-preferences)获取。 # 字段说明 本数据集包含成对的视频对比样本。每条数据均包含`video1`与`video2`字段,其中存储了用于快速预览的压缩GIF文件链接。全分辨率视频可通过[此链接](https://huggingface.co/datasets/Rapidata/text-2-video-human-preferences/tree/main/Videos)获取。`weighted_results`字段包含0至1区间的分数,代表聚合后的用户反馈结果;单条用户标注结果则可在`detailedResults`字段中查看。 # 对齐度 对齐度分数用于量化视频与提示词的匹配程度。调研向参与者提出的问题为:「哪一段视频更贴合给定的描述?」 ## 示例 <div class="vertical-container"> <div class="container"> <div class="text-center"> <q>「一名独自划桨的皮划艇运动员在平静如镜的水面穿行,绚烂日落之下,天空被橙粉交织的色彩晕染,营造出静谧迷人的黄昏景致。」</q> </div> <div class="image-container"> <div> <h3 class="score-amount">Ray 2 </h3> <div class="score-percentage">(得分:91.56%)</div> <img src="https://assets.rapidata.ai/0046_ray2_1.gif" width=500> </div> <div> <h3 class="score-amount">Hunyuan </h3> <div class="score-percentage">(得分:8.44%)</div> <img src="https://assets.rapidata.ai/0046_hunyuan_1724.gif" width=500> </div> </div> </div> <div class="container"> <div class="text-center"> <q>「东京繁华街道的日落景致,霓虹灯光在热闹的夜色中闪烁,人群穿梭其中。捕捉雨后湿润路面的倒影,以及昼夜交替时城市生活的蓬勃活力。」</q> </div> <div class="image-container"> <div> <h3 class="score-amount">Ray 2 </h3> <div class="score-percentage">(得分:2.83%)</div> <img src="https://assets.rapidata.ai/0063_ray2_1.gif" width=500> </div> <div> <h3 class="score-amount">Sora </h3> <div class="score-percentage">(得分:97.17%)</div> <img src="https://assets.rapidata.ai/0063_sora_1.gif" width=500> </div> </div> </div> </div> # 连贯性 连贯性分数用于评估生成视频的逻辑自洽性,以及是否存在视觉 artifacts(伪影)或画面瑕疵。调研在不展示原始提示词的前提下,向参与者提出问题:「哪一段视频的逻辑连贯性更强?例如,物理规则违背更少、画面构图更合理的视频。」 ## 示例 <div class="vertical-container"> <div class="container"> <div class="image-container"> <div> <h3>Ray 2 </h3> <div class="score-percentage">(得分:90.42%)</div> <img src="https://assets.rapidata.ai/0098_ray2_1.gif" width="500" alt="Dataset visualization"> </div> <div> <h3>Pika </h3> <div class="score-percentage">(得分:9.58%)</div> <img src="https://assets.rapidata.ai/0098_pika_2445694862.gif" width="500" alt="Dataset visualization"> </div> </div> </div> <div class="container"> <div class="image-container"> <div> <h3>Ray 2 </h3> <div class="score-percentage">(得分:4.11%)</div> <img src="https://assets.rapidata.ai/0086_ray2_2.gif" width="500" alt="Dataset visualization"> </div> <div> <h3>Pika </h3> <div class="score-percentage">(得分:95.89%)</div> <img src="https://assets.rapidata.ai/0086_pika_1678426151.gif" width="500" alt="Dataset visualization"> </div> </div> </div> </div> # 审美偏好 偏好分数用于反映参与者对各段视频的视觉吸引力评价,不受提示词约束。调研向参与者提出的问题为:「从审美角度出发,你更偏好哪一段视频?」 ## 示例 <div class="vertical-container"> <div class="container"> <div class="image-container"> <div> <h3>Ray 2 </h3> <div class="score-percentage">(得分:61.12%)</div> <img src="https://assets.rapidata.ai/0036_ray2_1.gif" width="500" alt="Dataset visualization"> </div> <div> <h3>Sora </h3> <div class="score-percentage">(得分:38.88%)</div> <img src="https://assets.rapidata.ai/0036_sora_1.gif" width="500" alt="Dataset visualization"> </div> </div> </div> <div class="container"> <div class="image-container"> <div> <h3>Ray 2 </h3> <div class="score-percentage">(得分:39.48%)</div> <img src="https://assets.rapidata.ai/0020_ray2_2.gif" width="500" alt="Dataset visualization"> </div> <div> <h3>Hunyuan </h3> <div class="score-percentage">(得分:60.52%)</div> <img src="https://assets.rapidata.ai/0020_hunyuan_1724.gif" width="500" alt="Dataset visualization"> </div> </div> </div> </div> </br> # 关于 Rapidata Rapidata的技术让大规模人类反馈采集工作比以往更快速、更易获取。访问[rapidata.ai](https://www.rapidata.ai/),了解我们如何革新AI开发中的人类反馈采集流程。 # 其他数据集 我们针对主流图像生成模型开展了基准测试,测试结果可在我们的[官网](https://www.rapidata.ai/leaderboard/image-models)查看。我们将根据模型的连贯性/合理性、与提示词的对齐度以及风格偏好对模型进行排名。相关的200万+条标注数据可通过以下链接获取: - [Rich Video Annotation 数据集](https://huggingface.co/datasets/Rapidata/text-2-video-Rich-Human-Feedback) - [连贯性数据集](https://huggingface.co/datasets/Rapidata/Flux_SD3_MJ_Dalle_Human_Coherence_Dataset) - [文图对齐数据集](https://huggingface.co/datasets/Rapidata/Flux_SD3_MJ_Dalle_Human_Alignment_Dataset) - [人类偏好数据集](https://huggingface.co/datasets/Rapidata/700k_Human_Preference_Dataset_FLUX_SD3_MJ_DALLE3) 我们还采集了[Rich Human Feedback 数据集](https://huggingface.co/datasets/Rapidata/text-2-image-Rich-Human-Feedback),针对提示词中的每个单词标注对齐度分数,同时对图像的连贯性、整体对齐度以及风格偏好进行评分,并最终为低分图像生成感兴趣区域的热力图标注。
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2025-02-08
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