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- #!/usr/bin/env python
- # -*- coding: utf-8 -*-
- ##################################################################
- #
- # Copyright (c) 2024 CICV, Inc. All Rights Reserved
- #
- ##################################################################
- """
- @Authors: zhanghaiwen
- @Data: 2024/12/23
- @Last Modified: 2024/12/23
- @Summary: Efficient metrics calculation
- """
- from modules.lib.score import Score
- from modules.lib.log_manager import LogManager
- import numpy as np
- from typing import Dict, Tuple, Optional, Callable, Any
- import pandas as pd
- class Efficient:
- """高效性指标计算类"""
-
- def __init__(self, data_processed):
- """初始化高效性指标计算类
-
- Args:
- data_processed: 预处理后的数据对象
- """
- self.logger = LogManager().get_logger()
- self.data_processed = data_processed
- self.df = data_processed.object_df.copy() # 浅拷贝
- self.ego_df = data_processed.ego_data.copy() # 浅拷贝
-
- # 配置参数
- self.STOP_SPEED_THRESHOLD = 0.05 # 停车速度阈值 (m/s)
- self.STOP_TIME_THRESHOLD = 0.5 # 停车时间阈值 (秒)
- self.FRAME_RANGE = 13 # 停车帧数阈值
-
- # 初始化结果变量
- self.stop_count = 0 # 停车次数
- self.stop_duration = 0 # 平均停车时长
- self.average_v = 0 # 平均速度
-
- def _max_speed(self):
- """计算最大速度
-
- Returns:
- float: 最大速度 (m/s)
- """
- return self.ego_df['v'].max()
- def _deviation_speed(self):
- """计算速度方差
-
- Returns:
- float: 速度方差
- """
- return self.ego_df['v'].var()
- def average_velocity(self):
- """计算平均速度
-
- Returns:
- float: 平均速度 (m/s)
- """
- self.average_v = self.ego_df['v'].mean()
- return self.average_v
- def stop_duration_and_count(self):
- """计算停车次数和平均停车时长
-
- Returns:
- float: 平均停车时长 (秒)
- """
- # 获取速度低于阈值的时间和帧号
- stop_mask = self.ego_df['v'] <= self.STOP_SPEED_THRESHOLD
- if not any(stop_mask):
- return 0 # 如果没有停车,直接返回0
-
- stop_time_list = self.ego_df.loc[stop_mask, 'simTime'].values.tolist()
- stop_frame_list = self.ego_df.loc[stop_mask, 'simFrame'].values.tolist()
-
- if not stop_frame_list:
- return 0 # 防止空列表导致的索引错误
-
- stop_frame_group = []
- stop_time_group = []
- sum_stop_time = 0
- f1, t1 = stop_frame_list[0], stop_time_list[0]
-
- # 检测停车段
- for i in range(1, len(stop_frame_list)):
- if stop_frame_list[i] - stop_frame_list[i - 1] != 1: # 帧不连续
- f2, t2 = stop_frame_list[i - 1], stop_time_list[i - 1]
- # 如果停车有效(帧数差 >= FRAME_RANGE)
- if f2 - f1 >= self.FRAME_RANGE:
- stop_frame_group.append((f1, f2))
- stop_time_group.append((t1, t2))
- sum_stop_time += (t2 - t1)
- self.stop_count += 1
- # 更新起始点
- f1, t1 = stop_frame_list[i], stop_time_list[i]
-
- # 检查最后一段停车
- if len(stop_frame_list) > 0:
- f2, t2 = stop_frame_list[-1], stop_time_list[-1]
- last_frame = self.ego_df['simFrame'].values[-1]
- # 确保不是因为数据结束导致的停车
- if f2 - f1 >= self.FRAME_RANGE and f2 != last_frame:
- stop_frame_group.append((f1, f2))
- stop_time_group.append((t1, t2))
- sum_stop_time += (t2 - t1)
- self.stop_count += 1
-
- # 计算平均停车时长
- self.stop_duration = sum_stop_time / self.stop_count if self.stop_count > 0 else 0
-
- self.logger.info(f"检测到停车次数: {self.stop_count}, 平均停车时长: {self.stop_duration:.2f}秒")
- return self.stop_duration
- def report_statistic(self):
- """生成统计报告
-
- Returns:
- dict: 高效性评估结果
- """
- # 计算各项指标
- max_speed_ms = self._max_speed()
- deviation_speed_ms = self._deviation_speed()
- average_speed_ms = self.average_velocity()
-
- # 将 m/s 转换为 km/h 用于评分
- max_speed_kmh = max_speed_ms * 3.6
- deviation_speed_kmh = deviation_speed_ms * 3.6
- average_speed_kmh = average_speed_ms * 3.6
-
- efficient_result = {
- 'maxSpeed': max_speed_kmh, # 转换为 km/h
- 'deviationSpeed': deviation_speed_kmh, # 转换为 km/h
- 'averagedSpeed': average_speed_kmh, # 转换为 km/h
- 'stopDuration': self.stop_duration_and_count()
- }
-
- self.logger.info(f"高效性指标计算完成,结果: {efficient_result}")
-
- return efficient_result
- # ----------------------
- # 基础指标计算函数
- # ----------------------
- def maxSpeed(data_processed) -> dict:
- """计算最大速度"""
- efficient = Efficient(data_processed)
- max_speed = efficient._max_speed() * 3.6 # 转换为 km/h
- return {"maxSpeed": float(max_speed)}
- def deviationSpeed(data_processed) -> dict:
- """计算速度方差"""
- efficient = Efficient(data_processed)
- deviation = efficient._deviation_speed() * 3.6 # 转换为 km/h
- return {"deviationSpeed": float(deviation)}
- def averagedSpeed(data_processed) -> dict:
- """计算平均速度"""
- efficient = Efficient(data_processed)
- avg_speed = efficient.average_velocity() * 3.6 # 转换为 km/h
- return {"averagedSpeed": float(avg_speed)}
- def stopDuration(data_processed) -> dict:
- """计算停车持续时间和次数"""
- efficient = Efficient(data_processed)
- stop_duration = efficient.stop_duration_and_count()
- return {"stopDuration": float(stop_duration)}
- class EfficientRegistry:
- """高效性指标注册器"""
-
- def __init__(self, data_processed):
- self.logger = LogManager().get_logger() # 获取全局日志实例
- self.data = data_processed
- self.eff_config = data_processed.efficient_config["efficient"]
- self.metrics = self._extract_metrics(self.eff_config)
- self._registry = self._build_registry()
-
- def _extract_metrics(self, config_node: dict) -> list:
- """DFS遍历提取指标"""
- metrics = []
- def _recurse(node):
- if isinstance(node, dict):
- if 'name' in node and not any(isinstance(v, dict) for v in node.values()):
- metrics.append(node['name'])
- for v in node.values():
- _recurse(v)
- _recurse(config_node)
- self.logger.info(f'评比的高效性指标列表:{metrics}')
- return metrics
-
- def _build_registry(self) -> dict:
- """自动注册指标函数"""
- registry = {}
- for metric_name in self.metrics:
- try:
- registry[metric_name] = globals()[metric_name]
- except KeyError:
- self.logger.error(f"未实现指标函数: {metric_name}")
- return registry
-
- def batch_execute(self) -> dict:
- """批量执行指标计算"""
- results = {}
- for name, func in self._registry.items():
- try:
- result = func(self.data)
- results.update(result)
- # 新增:将每个指标的结果写入日志
- self.logger.info(f'高效性指标[{name}]计算结果: {result}')
- except Exception as e:
- self.logger.error(f"{name} 执行失败: {str(e)}", exc_info=True)
- results[name] = None
- self.logger.info(f'高效性指标计算结果:{results}')
- return results
- class EfficientManager:
- """高效性指标管理类"""
- def __init__(self, data_processed):
- self.data = data_processed
- self.efficient = EfficientRegistry(self.data)
-
- def report_statistic(self):
- """Generate the statistics and report the results."""
- # 使用注册表批量执行指标计算
- efficient_result = self.efficient.batch_execute()
- return efficient_result
-
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