Ubuntu18.04安装Autoware1.15(解决Openplanner无法绕障的问题:Openplanner2.5)


在Autoware1.14配置的环境基础上安装Autoware1.15,解决一些报错
环境配置参考Autoware1.14的安装教程:Ubuntu18.04安装autoware 1.14(GPU版) 完整教程(包含环境搭建)

一、下载Autoware1.15源码

下载地址(注意包含了完整的Autoware,并不是只有Openplanner):https://github.com/hatem-darweesh/autoware.ai.openplanner

mkdir src

下载代码:

vcs import src < openplanner.1.15.repos

二、安装依赖

sudo apt-get install libnl-3-dev libnl-genl-3-dev
sudo apt-get install ros-melodic-tvm-vendor 
sudo apt-get install ros-melodic-lanelet2-io ros-melodic-lanelet2-core ros-melodic-lanelet2-maps ros-melodic-lanelet2-projection ros-melodic-lanelet2-routing ros-melodic-lanelet2-validation

三、修改CUDA版本

src/autoware/common/autoware_build_flags/cmake下的CUDA版本改为11.4(或者你电脑上的版本)
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四、编译以及报错解决

编译

UTOWARE_COMPILE_WITH_CUDA=1 colcon build --cmake-args -DCMAKE_BUILD_TYPE=Release
# 编译特定的包
UTOWARE_COMPILE_WITH_CUDA=1 colcon build --cmake-args -DCMAKE_BUILD_TYPE=Release --packages-select lidar_kf_contour_track

(1)报 undefined reference to cv::Mat::Mat() 的错就按照下面方式改相应包:

find_package(OpenCV 3.4 REQUIRED)

include_directories(
  ${OpenCV_INCLUDE_DIRS}
)

target_link_libraries(target ${OpenCV_LIBS})

在这里插入图片描述

(2)遇到报错:

error: could not convert 'cv::Scalar_<double>((double)0,(double)255,(double)255,(double)0,)' from 'cv::Scalar {aka cv::Scalar_<double>}' to 'CvScalar' error:conversion from 'cv::Mat' to non-scalar type 'IplImage {aka _IplImage}' requested

在这里插入图片描述
CV_RGB改为cvScalar
使用cvIplImage()函数将类型转换一下:

在这里插入图片描述

(3)报错:error: conversion from ‘cv::Mat’ to non-scalar type ‘CvMat’ requested,将报错那句改为:

在这里插入图片描述

CvMat* cvmat;
for(size_t i=0; i< sum_mat.rows; ++i)
        for(size_t j=0; j< sum_mat.cols; ++j)
        {
    
    
          ((double*)(cvmat->data.ptr + i*cvmat->step))[j] = sum_mat.at<double>(i,j);
        }

(4)报错error: no match for ‘operator=’ (operand types are ‘CvPoint’ and ‘cv::Point {aka cv::Point_<int>}’,将下面这句中的cv::Point改为cvPoint

// textOrg = cv::Point(ctx.topLeft.x, ctx.botRight.y + baseline);
textOrg = cvPoint(ctx.topLeft.x, ctx.botRight.y + baseline);

(5)报错,找不到cuDNN的头文件:

/usr/local/cuda-11.4/include/cudnn.h:61:10: fatal error: cudnn_ops_infer.h: No such file or directory CMake Error at op_tlr_generated_network_kernels.cu.o.Release.cmake:225 (message):
在Autoware1.14环境配置时,安装cuDNN把所有的头文件都复制过去:

# sudo cp include/cudnn.h /usr/local/cuda/include/ 
sudo cp include/cudnn*.h /usr/local/cuda/include/ 

(6)报错, op_tlr包未找到cuDNN的库:

/usr/bin/ld: cannot find -lcudart /usr/bin/ld: cannot find -lcublas /usr/bin/ld: cannot find -lcurand /usr/bin/ld: cannot find -lcudnn

发现是Cmakelists.txt中CUDA的库文件包含路径错误,在op_tlr包中改成自己的CUDA版本在这里插入图片描述

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转载自blog.csdn.net/zardforever123/article/details/131917755