利用deepstream python将analytics产生的统计数据发送到kafka

概述

deepstream-occupancy-analytics项目提供了一种往kafka发送analytics统计数据的方法。但是所有的改动,特别是主程序是用C语言开发的。但写这篇文章的时候,在网上还没发现官方系统性的说明和解释,都是一些零碎的问答。

因此综合参考文档,以跨线统计为例,提供了一种python版本发送统计数据的方法,同时详细说明了需要改动和编译哪些C程序以及deepstream python bindings。可以参考主要改动定制化自己想要收集并发送的数据内容和格式。

改动的地方不多,但对于没接触过C语言的人来说,需要花费一些时间,因此下面记录了探索的过程。程序请参考deepstream_python_nvdsanalytics_to_kafka

nvidia论坛上有人回复说,在以后的release中,将会提供基于deepstream python发送自定义数据的功能

主要改动分为三点:

  1. 将自定义的数据结构追加到NvDsEventMsgMeta,例如将lc_curr_straightlc_cum_straight加入
  2. 修改eventmsg_payload程序,编译产生libnvds_msgconv.so
  3. 同步更改bindschema.cpp, 编译deepstream python bindings

最后只需要在python程序中加入如下代码即可发送自定义的统计数据:

# line crossing current count of frame
obj_lc_curr_cnt = user_meta_data.objLCCurrCnt
# line crossing cumulative count
obj_lc_cum_cnt = user_meta_data.objLCCumCnt
msg_meta.lc_curr_straight = obj_lc_curr_cnt["straight"]
msg_meta.lc_cum_straight = obj_lc_cum_cnt["straight"] 

obj_lc_curr_cnt和obj_lc_cum_cnt的key在config_nvdsananlytics.txt中定义

还有一种更简单的方案。如果场景需求中,时延并不重要,也不需要同时处理大规模视频流的话,可以考虑使用kafka-python 等python库,直接将获取到的analytics发送出去,不经过nvmsgconvnvmsgbroker这两个插件。
如果时延重要,或者要处理大规模视频流,则需要参考下文微调一下C的源代码,重新编译,因为探针函数是阻塞的,并不适合在里面加入复杂的处理逻辑。

运行环境

  • nvidia-docker2
  • deepstream-6.1

如何运行

如果想插入自定义的消息,请直接参考主要改动

构建docker镜像并运行

  • clone 该代码仓库, 在deepstream_python_nvdsanalytics_to_kafka目录, 运行 sh docker/build.sh <image_name> 构建镜像, e.g:
    sh docker/build.sh deepstream:6.1-triton-jupyter-python-custom

  • 运行docker镜像并进入jupyter环境

    docker run --gpus  device=0  -p 8888:8888 -d --shm-size=1g  -w /opt/nvidia/deepstream/deepstream-6.1/sources/deepstream_python_apps/mount/   -v ~/deepstream_python_nvdsanalytics_to_kafka/:/opt/nvidia/deepstream/deepstream-6.1/sources/deepstream_python_apps/mount  deepstream:6.1-triton-jupyter-python-custom
    

    浏览器输入http://<host_ip>:8888进入jupyter开发环境

  • (可选) 在kubernetes的master节点, 运行 sh /docker/ds-jupyter-statefulset.sh 启动一个deepstream实例. 前提是集群已部署 nvidia-device-plugin

运行deepstream python推送消息

deepstream python pipeline位于/pyds_kafka_example/run.py ,主要参考 deepstream-test4deepstream-nvdsanalytics

pipeline主要结构如下:
alt

  • 运行前,需要在pyds_kafka_example/cfg_kafka.txt里修改partition-key的值,设置为deviceId,这样nvmsgbroker插件会将消息体中deviceId对应的值设置为partition-key

  • 安装java
    apt update && apt install -y openjdk-11-jdk

  • 如何没有单独的kafka集群,请参考在deepstream实例中部署kafka并创建topic

    tar -xzf kafka_2.13-3.2.1.tgz
    cd kafka_2.13-3.2.1
    bin/zookeeper-server-start.sh config/zookeeper.properties
    bin/kafka-server-start.sh config/server.properties
    bin/kafka-topics.sh --create --topic ds-kafka --bootstrap-server localhost:9092
    
  • 进入 pyds_kafka_example 目录运行deepstream python pipeline, e.g:

    python3 run.py -i /opt/nvidia/deepstream/deepstream-6.1/samples/streams/sample_720p.h264 -p /opt/nvidia/deepstream/deepstream-6.1/lib/libnvds_kafka_proto.so --conn-str="localhost;9092;ds-kafka" -s 0 --no-display
    

消费kafka数据

# go to kafka_2.13-3.2.1 directory and run
bin/kafka-console-consumer.sh --topic ds-kafka --from-beginning --bootstrap-server localhost:9092

输入如下:

{
    
    
  "messageid" : "34359fe1-fa36-4268-b6fc-a302dbab8be9",
  "@timestamp" : "2022-08-20T09:05:01.695Z",
  "deviceId" : "device_test",
  "analyticsModule" : {
    
    
    "id" : "XYZ",
    "description" : "\"Vehicle Detection and License Plate Recognition\"",
    "source" : "OpenALR",
    "version" : "1.0",
    "lc_curr_straight" : 1,
    "lc_cum_straight" : 39
  }
}

主要改动

在NvDsEventMsgMeta结构里添加analytics msg meta

nvdsmeta_schema.h的232行,插入自定义的analytics msg meta到NvDsEventMsgMeta结构中

  guint lc_curr_straight;
  guint lc_cum_straight;

编译libnvds_msgconv.so

  • deepstream_schema

    /opt/nvidia/deepstream/deepstream/sources/libs/nvmsgconv目录中,nvmsgconv/deestream_schema/deepstream_schema.h文件的93行,加入同样的analytics msg meta定义到NvDsAnalyticsObject结构

      guint lc_curr_straight;
      guint lc_cum_straight;
    
  • eventmsg_payload

    自定义消息体最重要的一步,在 nvmsgconv/deepstream_schema/eventmsg_payload.cpp文件的186行,给generate_analytics_module_object函数加入自定义的analytics msg meta

      // custom analytics data
      // json_object_set_int_member (analyticsObj, 消息体中的key, 消息体中的value);
      json_object_set_int_member (analyticsObj, "lc_curr_straight", meta->lc_curr_straight);
      json_object_set_int_member (analyticsObj, "lc_curr_straight", meta->lc_curr_straight);
      json_object_set_int_member (analyticsObj, "lc_cum_straight", meta->lc_cum_straight);
    

    在536行generate_event_message函数中,可以注释无效的消息,减小发送消息的大小

    // // place object
    // placeObj = generate_place_object (privData, meta);
    
    // // sensor object
    // sensorObj = generate_sensor_object (privData, meta);
    
    // analytics object
    analyticsObj = generate_analytics_module_object (privData, meta);
    
    // // object object
    // objectObj = generate_object_object (privData, meta);
    
    // // event object
    // eventObj = generate_event_object (privData, meta);
    
    // root object
    rootObj = json_object_new ();
    json_object_set_string_member (rootObj, "messageid", msgIdStr);
    // json_object_set_string_member (rootObj, "mdsversion", "1.0");
    json_object_set_string_member (rootObj, "@timestamp", meta->ts);
    
    // use the orginal params sensorStr in NvDsEventMsgMeta to accept deviceId that generated by python script
    json_object_set_string_member (rootObj, "deviceId", meta->sensorStr);
    // json_object_set_object_member (rootObj, "place", placeObj);
    // json_object_set_object_member (rootObj, "sensor", sensorObj);
    json_object_set_object_member (rootObj, "analyticsModule", analyticsObj);
    
    // not use these metadata
    // json_object_set_object_member (rootObj, "object", objectObj);
    // json_object_set_object_member (rootObj, "event", eventObj);
    
    // if (meta->videoPath)
    //   json_object_set_string_member (rootObj, "videoPath", meta->videoPath);
    // else
    //   json_object_set_string_member (rootObj, "videoPath", "");
    
  • 重新编译自定义的libnvds_msgconv.so

    cd /opt/nvidia/deepstream/deepstream/sources/libs/nvmsgconv \
    && make \
    && cp libnvds_msgconv.so /opt/nvidia/deepstream/deepstream/lib/libnvds_msgconv.so
    

编译Python bindings

编译deepstream python binding前,在 <your own path>/deepstream_python_apps/bindings/src/bindschema.cpp中,加入对应的msg定义

  .def_readwrite("lc_curr_straight", &NvDsEventMsgMeta::lc_curr_straight)
  .def_readwrite("lc_cum_straight", &NvDsEventMsgMeta::lc_cum_straight);

接着编译deepstream python binding,并且通过pip安装,更多的操作请参考 /docker/Dockerfile

参考文档

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转载自blog.csdn.net/weixin_41817841/article/details/126451689