modify some unused utils such as log record

This commit is contained in:
TJU_Lu
2024-12-08 10:30:47 +08:00
parent 38f37fd7a2
commit 73908cc899
4 changed files with 71 additions and 86 deletions

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@@ -1,52 +1,38 @@
# 实飞数据训练:将全局地图裁剪并保存
# 1、注意数据收集时地面尽量平且需要为z=0
# 2、收集数据不平时修改yaw_angle_radians, pitch_angle_radians平移并与data collection一致
# 3、bug需要打开保存的文件手动把前面几行的double改成float...
"""
算法具有一定的Sim2Real的泛化能力, 如果有条件可用雷达+深度相机收集数据, 合并至仿真数据集中一同训练, 以进一步保证实飞的可靠性
# (1) 运行雷达里程计以记录无人机状态和地图真值. 注意保证地图和里程计处于同一坐标系请在一次运行中同时记录图像与里程计的rosbag + 保存地图
# (可选) 运行本文件对地图进行降噪, 并可修改translation_no和R_no(yaw, pitch, roll)对地图进行变换修正里程计漂移导致的地图倾斜注意与data_collection_realworld一致
(BUG: 打开保存的地图ply文件手动把前面几行的double改成float)
# (3) 播包rosbag, 运行data_collection_realworld, 记录位置、姿态、图像保存至save_dir
"""
import open3d as o3d
import numpy as np
from scipy.spatial.transform import Rotation
# 1. 加载点云数据
point_cloud = o3d.io.read_point_cloud("1.pcd") # 替换为点云文件的路径
R_no = Rotation.from_euler('ZYX', [0.0, 0.0, 0.0], degrees=True) # yaw, pitch, roll
translation_no = np.array([0.0, 0.0, 0.0])
# 0. 加载点云数据
point_cloud = o3d.io.read_point_cloud("map_original.pcd") # 替换为点云文件的路径
# # 统计离群点移除滤波
# cl, ind = cropped_point_cloud.remove_statistical_outlier(nb_neighbors=5, std_ratio=1.0) # 调整参数以控制移除离群点的程度
# filtered_cloud = cropped_point_cloud.select_by_index(ind)
# 1. 统计离群点移除滤波
cl, ind = point_cloud.remove_statistical_outlier(nb_neighbors=6, std_ratio=2.0)
point_cloud = point_cloud.select_by_index(ind)
# 2. 定义旋转角度(偏航角和俯仰角)
yaw_angle_degrees = -15 # 偏航角(以度为单位)
pitch_angle_degrees = -3 # 俯仰角(以度为单位)
# 3. 将角度转换为弧度
yaw_angle_radians = np.radians(yaw_angle_degrees)
pitch_angle_radians = np.radians(pitch_angle_degrees)
yaw_rotation = np.array([[np.cos(yaw_angle_radians), -np.sin(yaw_angle_radians), 0],
[np.sin(yaw_angle_radians), np.cos(yaw_angle_radians), 0],
[0, 0, 1]])
pitch_rotation = np.array([[np.cos(pitch_angle_radians), 0, np.sin(pitch_angle_radians)],
[0, 1, 0],
[-np.sin(pitch_angle_radians), 0, np.cos(pitch_angle_radians)]])
# 4. 平移2米到Z方向
translation_no = np.array([0, 0, 2]) # 平移2米到Z方向
# 5. 组合旋转矩阵 R old->new
R_on = np.dot(yaw_rotation, pitch_rotation) # 内旋是右乘先yaw后pitch
# 2. 旋转地图以进行矫正
# P_n = (R_no * P_o.T).T + t_no = P_o * R_on + t_no
R_on = R_no.inv().as_matrix()
point_cloud.points = o3d.utility.Vector3dVector(np.dot(np.asarray(point_cloud.points), R_on) + translation_no)
# o3d.visualization.draw_geometries([point_cloud])
# 3. 裁剪点云无关区域
min_bound = np.array([-50.0, -50.0, -1])
max_bound = np.array([50.0, 50.0, 6])
# 2. 定义裁剪范围
# 例如,裁剪一个立方体范围,这里给出立方体的最小点和最大点坐标
min_bound = np.array([-5.0, -18.0, 0]) # 最小点坐标
max_bound = np.array([150.0, 25.0, 6]) # 最大点坐标
# 3. 使用crop函数裁剪点云
cropped_point_cloud = point_cloud.crop(o3d.geometry.AxisAlignedBoundingBox(min_bound, max_bound))
o3d.io.write_point_cloud("realworld.ply", cropped_point_cloud, write_ascii=True)
o3d.io.write_point_cloud("map_processed.ply", cropped_point_cloud, write_ascii=True)
o3d.visualization.draw_geometries([cropped_point_cloud])