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vidu/q3-mix/reference-to-video
Vidu Q3-Mix Reference to Video
图生视频

Vidu Q3 Mix Reference-to-Video API by Vidu

vidu/q3-mix/reference-to-video
Reference-to-video

Vidu Q3-Mix Reference-to-Video generates videos from 1-4 reference images with consistent subjects. Offers strong visual quality with intelligent scene transitions, smooth dynamic effects, and audio support up to 1080p.

输入

正在加载参数配置...

输出

空闲
生成的视频将在这里显示
配置参数后点击运行开始生成

每次运行将花费 $0.106。$10 可运行约 94 次。

参数

代码示例

import requests
import time

# Step 1: Start video generation
generate_url = "https://api.atlascloud.ai/api/v1/model/generateVideo"
headers = {
    "Content-Type": "application/json",
    "Authorization": "Bearer $ATLASCLOUD_API_KEY"
}
data = {
    "model": "vidu/q3-mix/reference-to-video",
    "prompt": "A beautiful sunset over the ocean with gentle waves",
    "width": 512,
    "height": 512,
    "duration": 3,
    "fps": 24,
}

generate_response = requests.post(generate_url, headers=headers, json=data)
generate_result = generate_response.json()
prediction_id = generate_result["data"]["id"]

# Step 2: Poll for result
poll_url = f"https://api.atlascloud.ai/api/v1/model/prediction/{prediction_id}"

def check_status():
    while True:
        response = requests.get(poll_url, headers={"Authorization": "Bearer $ATLASCLOUD_API_KEY"})
        result = response.json()

        if result["data"]["status"] in ["completed", "succeeded"]:
            print("Generated video:", result["data"]["outputs"][0])
            return result["data"]["outputs"][0]
        elif result["data"]["status"] == "failed":
            raise Exception(result["data"]["error"] or "Generation failed")
        else:
            # Still processing, wait 2 seconds
            time.sleep(2)

video_url = check_status()

安装

安装所需的依赖包。

bash
pip install requests

认证

所有 API 请求需要通过 API Key 进行认证。您可以在 Atlas Cloud 控制台获取 API Key。

bash
export ATLASCLOUD_API_KEY="your-api-key-here"

HTTP 请求头

python
import os

API_KEY = os.environ.get("ATLASCLOUD_API_KEY")
headers = {
    "Content-Type": "application/json",
    "Authorization": f"Bearer {API_KEY}"
}
保护好您的 API Key

切勿在客户端代码或公开仓库中暴露您的 API Key。请使用环境变量或后端代理。

提交请求

import requests

url = "https://api.atlascloud.ai/api/v1/model/generateVideo"
headers = {
    "Content-Type": "application/json",
    "Authorization": "Bearer $ATLASCLOUD_API_KEY"
}
data = {
    "model": "your-model",
    "prompt": "A beautiful landscape"
}

response = requests.post(url, headers=headers, json=data)
print(response.json())

提交请求

提交一个异步生成请求。API 返回一个 prediction ID,您可以用它来检查状态和获取结果。

POST/api/v1/model/generateVideo

请求体

import requests

url = "https://api.atlascloud.ai/api/v1/model/generateVideo"
headers = {
    "Content-Type": "application/json",
    "Authorization": "Bearer $ATLASCLOUD_API_KEY"
}

data = {
    "model": "vidu/q3-mix/reference-to-video",
    "input": {
        "prompt": "A beautiful sunset over the ocean with gentle waves"
    }
}

response = requests.post(url, headers=headers, json=data)
result = response.json()

print(f"Prediction ID: {result['id']}")
print(f"Status: {result['status']}")

响应

{
  "id": "pred_abc123",
  "status": "processing",
  "model": "model-name",
  "created_at": "2025-01-01T00:00:00Z"
}

检查状态

轮询 prediction 端点以检查请求的当前状态。

GET/api/v1/model/prediction/{prediction_id}

轮询示例

import requests
import time

prediction_id = "pred_abc123"
url = f"https://api.atlascloud.ai/api/v1/model/prediction/{prediction_id}"
headers = { "Authorization": "Bearer $ATLASCLOUD_API_KEY" }

while True:
    response = requests.get(url, headers=headers)
    result = response.json()
    status = result["data"]["status"]
    print(f"Status: {status}")

    if status in ["completed", "succeeded"]:
        output_url = result["data"]["outputs"][0]
        print(f"Output URL: {output_url}")
        break
    elif status == "failed":
        print(f"Error: {result['data'].get('error', 'Unknown')}")
        break

    time.sleep(3)

状态值

processing请求仍在处理中。
completed生成完成,输出可用。
succeeded生成成功,输出可用。
failed生成失败,请检查 error 字段。

完成响应

{
  "data": {
    "id": "pred_abc123",
    "status": "completed",
    "outputs": [
      "https://storage.atlascloud.ai/outputs/result.mp4"
    ],
    "metrics": {
      "predict_time": 45.2
    },
    "created_at": "2025-01-01T00:00:00Z",
    "completed_at": "2025-01-01T00:00:10Z"
  }
}

上传文件

将文件上传到 Atlas Cloud 存储,获取可在 API 请求中使用的 URL。使用 multipart/form-data 上传。

POST/api/v1/model/uploadMedia

上传示例

import requests

url = "https://api.atlascloud.ai/api/v1/model/uploadMedia"
headers = { "Authorization": "Bearer $ATLASCLOUD_API_KEY" }

with open("image.png", "rb") as f:
    files = {"file": ("image.png", f, "image/png")}
    response = requests.post(url, headers=headers, files=files)

result = response.json()
download_url = result["data"]["download_url"]
print(f"File URL: {download_url}")

响应

{
  "data": {
    "download_url": "https://storage.atlascloud.ai/uploads/abc123/image.png",
    "file_name": "image.png",
    "content_type": "image/png",
    "size": 1024000
  }
}

Input Schema

以下参数在请求体中被接受。

总计: 0必填: 0可选: 0

暂无可用参数。

请求体示例

json
{
  "model": "vidu/q3-mix/reference-to-video"
}

Output Schema

API 返回包含生成输出 URL 的 prediction 响应。

idstringrequired
Unique identifier for the prediction.
statusstringrequired
Current status of the prediction.
processingcompletedsucceededfailed
modelstringrequired
The model used for generation.
outputsarray[string]
Array of output URLs. Available when status is "completed".
errorstring
Error message if status is "failed".
metricsobject
Performance metrics.
predict_timenumber
Time taken for video generation in seconds.
created_atstringrequired
ISO 8601 timestamp when the prediction was created.
Format: date-time
completed_atstring
ISO 8601 timestamp when the prediction was completed.
Format: date-time

响应示例

json
{
  "id": "pred_abc123",
  "status": "completed",
  "model": "model-name",
  "outputs": [
    "https://storage.atlascloud.ai/outputs/result.mp4"
  ],
  "metrics": {
    "predict_time": 45.2
  },
  "created_at": "2025-01-01T00:00:00Z",
  "completed_at": "2025-01-01T00:00:10Z"
}

Atlas Cloud Skills

Atlas Cloud Skills 将 300+ AI 模型直接集成到您的 AI 编程助手中。一条命令安装,即可用自然语言生成图像、视频和与 LLM 对话。

支持的客户端

Claude Code
OpenAI Codex
Gemini CLI
Cursor
Windsurf
VS Code
Trae
GitHub Copilot
Cline
Roo Code
Amp
Goose
Replit
40+ 支持的客户端

安装

bash
npx skills add AtlasCloudAI/atlas-cloud-skills

设置 API Key

从 Atlas Cloud 控制台获取 API Key,并将其设置为环境变量。

bash
export ATLASCLOUD_API_KEY="your-api-key-here"

功能

安装后,您可以在 AI 助手中使用自然语言访问所有 Atlas Cloud 模型。

图像生成使用 Nano Banana 2、Z-Image 等模型生成图像。
视频创作使用 Kling、Vidu、Veo 等模型从文本或图像创建视频。
LLM 对话与 Qwen、DeepSeek 等大语言模型对话。
媒体上传上传本地文件用于图像编辑和图生视频工作流。

MCP Server

Atlas Cloud MCP Server 通过 Model Context Protocol 将您的 IDE 与 300+ AI 模型连接。支持任何兼容 MCP 的客户端。

支持的客户端

Cursor
VS Code
Windsurf
Claude Code
OpenAI Codex
Gemini CLI
Cline
Roo Code
100+ 支持的客户端

安装

bash
npx -y atlascloud-mcp

配置

将以下配置添加到您的 IDE 的 MCP 设置文件中。

json
{
  "mcpServers": {
    "atlascloud": {
      "command": "npx",
      "args": [
        "-y",
        "atlascloud-mcp"
      ],
      "env": {
        "ATLASCLOUD_API_KEY": "your-api-key-here"
      }
    }
  }
}

可用工具

atlas_generate_image从文本提示生成图像。
atlas_generate_video从文本或图像创建视频。
atlas_chat与大语言模型对话。
atlas_list_models浏览 300+ 可用 AI 模型。
atlas_quick_generate一步式内容创建,自动选择最佳模型。
atlas_upload_media上传本地文件用于 API 工作流。

API Schema

Schema 不可用

暂无可用示例

请登录以查看请求历史

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1. Introduction

Vidu Q3 is an advanced AI video generation model developed by Shengshu Technology (生数科技) in collaboration with Tsinghua University. Released on January 30, 2026, Vidu Q3 is designed to produce high-fidelity, synchronized audio-visual content with industry-leading continuous video length and native support for integrated audio generation.

The model represents a significant advancement in automated video synthesis by unifying multiple complex video generation tasks—such as lip-synced dialogue, dynamic camera movements, and multi-shot storytelling—into a single-pass framework. Leveraging a novel Transformer-based diffusion architecture, Vidu Q3 sets a new standard for cinematic and marketing video content creation with its combination of spatial-temporal coherence, multimodal input flexibility, and real-time directorial control.


2. Key Features & Innovations

  • Native Audio-Video Synchronization: Vidu Q3 generates lip-synced dialogue, sound effects, and background music simultaneously within a single pass, ensuring precise temporal alignment between audio tracks and visual lip movements without requiring post-processing.

  • Extended High-Definition Video Generation: Supports up to 16 seconds of continuous video at 1080p resolution and 24 frames per second—the longest continuous generation duration among leading competitors—enabling more complex storytelling sequences.

  • Smart Cuts for Scene Detection: Integrates automatic scene boundary detection and multi-shot narrative transitions, which facilitate the smooth generation of dynamic video scenes without manual intervention.

  • Native Camera Control: Allows frame-level directorial commands such as pans, push-ins, and tracking shots within the generation pipeline, granting users granular cinematic control over the resulting video composition.

  • Multimodal Input Flexibility: Accepts both text-to-video and image-to-video inputs with configurable start and end frame controls, enabling versatile use cases that range from scripted storyboarding to visual style transfer.

  • Transformer-based Diffusion Architecture with Spatiotemporal Attention: The underlying Universal Vision Transformer (U-ViT) utilizes spatiotemporal attention mechanisms instead of conventional convolutional U-Nets, improving motion consistency and temporal coherence across generated frames.

  • Model Variants Tailored for Fidelity and Speed: Offers differentiated configurations including Q3 Pro for maximum visual fidelity, Q3 Turbo optimized for higher generation speed, and the legacy Q2 Series focused on character consistency.


3. Model Architecture & Technical Details

Vidu Q3 is architected on the U-ViT (Universal Vision Transformer) framework, replacing traditional convolutional U-Net diffusion models with a Transformer-based diffusion approach. This design enables enhanced modeling of spatiotemporal dependencies essential for consistent video generation with coherent motion and scene dynamics.

The training utilized large-scale, multimodal datasets encompassing paired video, audio, and textual data to foster robust cross-modal understanding and synthesis. Multiple training stages refined resolution and temporal granularity, progressing toward 1080p, 24fps output over sequences up to 16 seconds.

Specialized modules incorporated include spatiotemporal attention layers for motion consistency and native audio-visual synchronization, alongside smart cut detection layers for automatic scene segmentation. The pipeline supports multimodal conditioning inputs (text and images) with frame-level temporal control allowing start and end frame specification.

Post-training refinement employed techniques such as supervised fine-tuning on domain-specific cinematic data and continuous evaluation on video generation benchmarks to optimize lip-sync accuracy and camera control responsiveness.


4. Performance Highlights

Vidu Q3 demonstrably leads in multiple benchmark categories, particularly for continuous video length and audiovisual integration quality. It achieves an ELO rating between approximately 1220–1244 on the Artificial Analysis Video Arena, outperforming contemporaries such as Runway Gen-4.5 and Kling 2.5 Turbo.

RankModelDeveloperELO ScoreRelease Date
1Sora 2[Undisclosed]~1250+Pre-2026
2Vidu Q3Shengshu Tech & Tsinghua1220–1244Jan 30, 2026
3Runway Gen-4.5Runway~12002025
4Kling 2.5 TurboKling AI~1190Late 2025

Qualitatively, Vidu Q3 delivers superior cinematics including advanced native camera motion and scene transitions compared to Veo 3.1 and Grok Imagine, while maintaining better audio integration than Sora 2 and Kling 3.0. Its 16-second generation duration notably surpasses the typical 8-15 second range of competitors, allowing more complex narratives per generation.


5. Intended Use & Applications

  • Commercial Advertising: Produces 12-16 second product demonstration videos with synchronized audio and high realism, suitable for digital marketing campaigns.

  • Marketing Videos: Generates videos combining dialogue, sound effects, and background music tailored for brand storytelling and promotional content.

  • Cinematic Short-Form Storytelling: Enables filmmakers and content creators to automatically craft multi-shot video sequences with directorial camera control and scene transitions.

  • Social Media Content Creation: Facilitates rapid production of engaging social videos with lip-synced speech and dynamic visuals optimized for platform consumption.

  • Architectural Visualization: Visualizes architectural designs with realistic camera movements and synchronized ambient sounds enhancing presentation fidelity.

  • Educational Video Production: Supports creation of instructional content blending narrated audio with synchronized visual demonstrations and scene changes.

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