import time import torch import cv2 from PIL import Image, ImageDraw, ImageOps import numpy as np from typing import Union from segment_anything import sam_model_registry, SamPredictor, SamAutomaticMaskGenerator import matplotlib.pyplot as plt import PIL from .mask_painter import mask_painter as mask_painter2 from .base_segmenter import BaseSegmenter from .painter import mask_painter, point_painter import os import requests import sys mask_color = 3 mask_alpha = 0.7 contour_color = 1 contour_width = 5 point_color_ne = 8 point_color_ps = 50 point_alpha = 0.9 point_radius = 15 contour_color = 2 contour_width = 5 class SamControler(): def __init__(self, SAM_checkpoint, model_type, device): ''' initialize sam controler ''' self.sam_controler = BaseSegmenter(SAM_checkpoint, model_type, device) # def seg_again(self, image: np.ndarray): # ''' # it is used when interact in video # ''' # self.sam_controler.reset_image() # self.sam_controler.set_image(image) # return def first_frame_click(self, image: np.ndarray, points:np.ndarray, labels: np.ndarray, multimask=True,mask_color=3): ''' it is used in first frame in video return: mask, logit, painted image(mask+point) ''' # self.sam_controler.set_image(image) origal_image = self.sam_controler.orignal_image neg_flag = labels[-1] if neg_flag==1: #find neg prompts = { 'point_coords': points, 'point_labels': labels, } masks, scores, logits = self.sam_controler.predict(prompts, 'point', multimask) mask, logit = masks[np.argmax(scores)], logits[np.argmax(scores), :, :] prompts = { 'point_coords': points, 'point_labels': labels, 'mask_input': logit[None, :, :] } masks, scores, logits = self.sam_controler.predict(prompts, 'both', multimask) mask, logit = masks[np.argmax(scores)], logits[np.argmax(scores), :, :] else: #find positive prompts = { 'point_coords': points, 'point_labels': labels, } masks, scores, logits = self.sam_controler.predict(prompts, 'point', multimask) mask, logit = masks[np.argmax(scores)], logits[np.argmax(scores), :, :] assert len(points)==len(labels) painted_image = mask_painter(image, mask.astype('uint8'), mask_color, mask_alpha, contour_color, contour_width) painted_image = point_painter(painted_image, np.squeeze(points[np.argwhere(labels>0)],axis = 1), point_color_ne, point_alpha, point_radius, contour_color, contour_width) painted_image = point_painter(painted_image, np.squeeze(points[np.argwhere(labels<1)],axis = 1), point_color_ps, point_alpha, point_radius, contour_color, contour_width) painted_image = Image.fromarray(painted_image) return mask, logit, painted_image