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# Ultralytics YOLO 🚀, AGPL-3.0 license
import cv2
from ultralytics.utils.checks import check_imshow
from ultralytics.utils.plotting import Annotator
class AIGym:
"""A class to manage the gym steps of people in a real-time video stream based on their poses."""
def __init__(self):
"""Initializes the AIGym with default values for Visual and Image parameters."""
# Image and line thickness
self.im0 = None
self.tf = None
# Keypoints and count information
self.keypoints = None
self.poseup_angle = None
self.posedown_angle = None
self.threshold = 0.001
# Store stage, count and angle information
self.angle = None
self.count = None
self.stage = None
self.pose_type = "pushup"
self.kpts_to_check = None
# Visual Information
self.view_img = False
self.annotator = None
# Check if environment support imshow
self.env_check = check_imshow(warn=True)
def set_args(
self,
kpts_to_check,
line_thickness=2,
view_img=False,
pose_up_angle=145.0,
pose_down_angle=90.0,
pose_type="pullup",
):
"""
Configures the AIGym line_thickness, save image and view image parameters.
Args:
kpts_to_check (list): 3 keypoints for counting
line_thickness (int): Line thickness for bounding boxes.
view_img (bool): display the im0
pose_up_angle (float): Angle to set pose position up
pose_down_angle (float): Angle to set pose position down
pose_type (str): "pushup", "pullup" or "abworkout"
"""
self.kpts_to_check = kpts_to_check
self.tf = line_thickness
self.view_img = view_img
self.poseup_angle = pose_up_angle
self.posedown_angle = pose_down_angle
self.pose_type = pose_type
def start_counting(self, im0, results, frame_count):
"""
Function used to count the gym steps.
Args:
im0 (ndarray): Current frame from the video stream.
results (list): Pose estimation data
frame_count (int): store current frame count
"""
self.im0 = im0
if frame_count == 1:
self.count = [0] * len(results[0])
self.angle = [0] * len(results[0])
self.stage = ["-" for _ in results[0]]
self.keypoints = results[0].keypoints.data
self.annotator = Annotator(im0, line_width=2)
for ind, k in enumerate(reversed(self.keypoints)):
if self.pose_type in {"pushup", "pullup"}:
self.angle[ind] = self.annotator.estimate_pose_angle(
k[int(self.kpts_to_check[0])].cpu(),
k[int(self.kpts_to_check[1])].cpu(),
k[int(self.kpts_to_check[2])].cpu(),
)
self.im0 = self.annotator.draw_specific_points(k, self.kpts_to_check, shape=(640, 640), radius=10)
if self.pose_type == "abworkout":
self.angle[ind] = self.annotator.estimate_pose_angle(
k[int(self.kpts_to_check[0])].cpu(),
k[int(self.kpts_to_check[1])].cpu(),
k[int(self.kpts_to_check[2])].cpu(),
)
self.im0 = self.annotator.draw_specific_points(k, self.kpts_to_check, shape=(640, 640), radius=10)
if self.angle[ind] > self.poseup_angle:
self.stage[ind] = "down"
if self.angle[ind] < self.posedown_angle and self.stage[ind] == "down":
self.stage[ind] = "up"
self.count[ind] += 1
self.annotator.plot_angle_and_count_and_stage(
angle_text=self.angle[ind],
count_text=self.count[ind],
stage_text=self.stage[ind],
center_kpt=k[int(self.kpts_to_check[1])],
line_thickness=self.tf,
)
if self.pose_type == "pushup":
if self.angle[ind] > self.poseup_angle:
self.stage[ind] = "up"
if self.angle[ind] < self.posedown_angle and self.stage[ind] == "up":
self.stage[ind] = "down"
self.count[ind] += 1
self.annotator.plot_angle_and_count_and_stage(
angle_text=self.angle[ind],
count_text=self.count[ind],
stage_text=self.stage[ind],
center_kpt=k[int(self.kpts_to_check[1])],
line_thickness=self.tf,
)
if self.pose_type == "pullup":
if self.angle[ind] > self.poseup_angle:
self.stage[ind] = "down"
if self.angle[ind] < self.posedown_angle and self.stage[ind] == "down":
self.stage[ind] = "up"
self.count[ind] += 1
self.annotator.plot_angle_and_count_and_stage(
angle_text=self.angle[ind],
count_text=self.count[ind],
stage_text=self.stage[ind],
center_kpt=k[int(self.kpts_to_check[1])],
line_thickness=self.tf,
)
self.annotator.kpts(k, shape=(640, 640), radius=1, kpt_line=True)
if self.env_check and self.view_img:
cv2.imshow("Ultralytics YOLOv8 AI GYM", self.im0)
if cv2.waitKey(1) & 0xFF == ord("q"):
return
return self.im0
if __name__ == "__main__":
AIGym()