视频区域修复
输入列名 | 说明 |
|---|---|
video_paths | 视频文件路径列(本地、TOS、HTTP等),与video_binaries二选一 |
video_binaries | 视频二进制数据列,与video_paths二选一 |
video_formats | 视频格式字符串列,配合video_binaries使用 |
inpaint_areas | 修复区域坐标列,List |
output_basenames | 输出文件基础名称列(不含扩展名) 若为None则使用原文件名加"_inpainted"后缀 |
处理后的结构化列,每个元素包含以下字段:
如参数没有默认值,则为必填参数
参数名称 | 类型 | 默认值 | 描述 |
|---|---|---|---|
output_tos_dir | str | TOS输出目录(必需) 修复后视频的TOS存储路径 格式:"tos://bucket/path" | |
model_path | str | /opt/las/models | 模型存储路径 默认值:"/opt/las/models" |
model_name | str | researchmm/STTN | 模型名称 默认值:"researchmm/STTN" |
neighbor_stride | int | 5 | 相邻帧步长 选择参考帧的间隔距离 较小值(3-5)适合慢动作视频,较大值(8-10)适合快动作视频 默认值:5 |
reference_length | int | 10 | 参考帧数量 用于修复当前帧的参考帧总数 提供时序上下文信息,值越大修复质量越好但计算量增加 默认值:10 |
max_load_num | int | 50 | 最大加载帧数 每次处理时最多同时加载到内存的视频帧数量 控制内存使用,避免长视频导致内存溢出 约束:max_load_num >= reference_length * neighbor_stride 默认值:50 |
rank | int or None | GPU设备编号 指定使用的GPU设备ID(多卡环境生效) None表示自动选择可用GPU 默认值:None |
下面的代码展示了如何使用 Daft(适用于分布式)运行算子对视频进行智能区域修复。
from __future__ import annotations import os import daft from daft import col from daft.las.functions.udf import las_udf from daft.las.functions.video import VideoSttnInpaint if __name__ == "__main__": # 更改完修复的视频会保存到指定的TOS路径下,因此,需要设置好环境变量以保证有权限写入TOS,包括:ACCESS_KEY,SECRET_KEY,TOS_ENDPOINT,TOS_REGION,TOS_TEST_DIR TOS_DIR = os.getenv("TOS_TEST_DIR", "tos_bucket") output_tos_dir = f"tos://{TOS_DIR}/video/video_sttn_inpaint" if os.getenv("DAFT_RUNNER", "native") == "ray": import logging import ray def configure_logging(): logging.basicConfig( level=logging.INFO, format="%(asctime)s - %(name)s - %(levelname)s - %(message)s", datefmt="%Y-%m-%d %H:%M:%S.%s".format(), ) logging.getLogger("tracing.span").setLevel(logging.WARNING) logging.getLogger("daft_io.stats").setLevel(logging.WARNING) logging.getLogger("DaftStatisticsManager").setLevel(logging.WARNING) logging.getLogger("DaftFlotillaScheduler").setLevel(logging.WARNING) logging.getLogger("DaftFlotillaDispatcher").setLevel(logging.WARNING) ray.init(dashboard_host="0.0.0.0", runtime_env={"worker_process_setup_hook": configure_logging}) daft.context.set_runner_ray() daft.set_execution_config(actor_udf_ready_timeout=600) daft.set_execution_config(min_cpu_per_task=0) tos_dir_url = os.getenv("TOS_DIR_URL", "las-cn-beijing-public-online.tos-cn-beijing.volces.com") samples = { "video_path": [ f"https://{tos_dir_url}/public/shared_video_dataset/watermark_sample.mp4" ] } ds = daft.from_pydict(samples) model_path = os.getenv("MODEL_PATH", "/opt/las/models") constructor_kwargs = { "output_tos_dir": output_tos_dir, "model_path": model_path, "model_name": "researchmm/STTN", "neighbor_stride": 5, "reference_length": 10, "max_load_num": 50, } ds = ds.with_column( "results", las_udf( VideoSttnInpaint, construct_args=constructor_kwargs, num_gpus=1, batch_size=1, concurrency=1, )(col("video_path")), ) ds.show() # ╭────────────────────────────────┬───────────────────────────────────────────────────────────────────────────────────────╮ # │ video_path ┆ results │ # │ --- ┆ --- │ # │ Utf8 ┆ Struct[output_path: Utf8, processed_frames: Int32, processed_resolution: List[Int32]] │ # ╞════════════════════════════════╪═══════════════════════════════════════════════════════════════════════════════════════╡ # │ https://las-cn-beijing-publi-… ┆ {output_path: tos://tos_bucket… │ # ╰────────────────────────────────┴───────────────────────────────────────────────────────────────────────────────────────╯