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| from BackendRunner import BackendRunner | |
| from sklearn.neighbors import NearestNeighbors | |
| from sklearn.metrics.pairwise import cosine_similarity | |
| from collections import Counter | |
| import numpy as np | |
| import torch | |
| import json | |
| import re | |
| import os | |
| class DatabaseHandler(BackendRunner): | |
| def __init__(self, checkpoint_pose, checkpoint_dino, db_path, db_data_path, k=11): | |
| self.device = torch.device('cuda' if torch.cuda.is_available() else 'cpu') | |
| self.checkpoint_pose = checkpoint_pose | |
| self.checkpoint_dino = checkpoint_dino | |
| self.models_pose = None | |
| self.model_dino_hand = None | |
| self.k = k | |
| self.db_path = db_path | |
| self.db_data_path = db_data_path | |
| def gen_database(self, folderpath, db_path): | |
| feature_database = {} | |
| for filename in os.listdir(folderpath): | |
| file_path = os.path.join(folderpath, filename) | |
| if os.path.isfile(file_path) and filename.lower().endswith('.jpg'): | |
| file_features, _ = self.get_features(file_path, source = None) | |
| feature_database[filename] = file_features | |
| #with open('output.txt', 'a') as file: | |
| # file.write(str(feature_database)) | |
| np.savez(db_path, feature_database) | |
| def load_db(self, db_path): | |
| data = np.load(db_path, allow_pickle=True) | |
| feature_database = {key: data[key].item() for key in data} | |
| return feature_database["arr_0"] | |
| def get_features(self, filepath, source): | |
| pose_output = self.pose_img(filepath, source) | |
| dino_embeddings = self.dino(pose_output, filepath, 0, save_patches=1) | |
| #print(dino_embeddings) | |
| predicted_hand = pose_output["cropped_right_hand"][0] | |
| return dino_embeddings, predicted_hand | |
| def knn_search(self, database, query_vector): | |
| db_values = database.values() | |
| db_keys = database.keys() | |
| similarities = [] | |
| for idx, db_vector in enumerate(db_values): | |
| sim = self.cosine_similarity(db_vector, query_vector) | |
| similarities.append((sim, list(db_keys)[idx])) | |
| # Sort by similarity and get the k largest | |
| similarities.sort(reverse=True, key=lambda x: x[0]) | |
| best_similarities, indices = zip(*similarities[:self.k]) | |
| return dict(zip(indices, best_similarities)) | |
| def cosine_similarity(self, emb_1, emb_2): | |
| # Calculate cosine similarity between two embeddings | |
| sim = cosine_similarity(np.squeeze(emb_1).reshape(1, -1), np.squeeze(emb_2).reshape(1, -1))[0][0] | |
| return sim | |
| def compute_results(self, image_dir, similarities_dict): | |
| # create a dict with keys == annotations, values == percentage | |
| total_keys = len(similarities_dict) | |
| numbers = re.findall(r'(?<=numeral)\d+', ' '.join(similarities_dict.keys())) | |
| numbers = {num: (count / len(numbers)) * 100 for num, count in Counter(numbers).items()} | |
| #If there are multiple best results with the same percentage, decide according to the cosine similarity value and reorder the dict | |
| max_percentage = max(numbers.values()) | |
| identical_percentages = [k for k, v in numbers.items() if v == max_percentage] | |
| best_key = max((num for num in identical_percentages if any(num in k for k in similarities_dict)), key=lambda n: max((v for k, v in similarities_dict.items() if n in k), default=0), default=None) | |
| numbers = {best_key: numbers.pop(best_key), **numbers} if best_key else numbers | |
| best_key_name = max((k for k in similarities_dict if f"numeral{best_key}.jpg" in k), key=similarities_dict.get, default=None) | |
| return numbers, best_key_name | |
| def retrieve_best_match_patch(self, filename, source): | |
| folderpath = self.db_data_path | |
| filepath = os.path.join(folderpath, filename) | |
| pose_output = self.pose_img(filepath, source, retrieve=True) | |
| predicted_hand = pose_output["cropped_right_hand"][0] | |
| return predicted_hand | |
| def predict(self, image_dir, source, db_files_path = None): | |
| # Load the database | |
| db = self.load_db(self.db_path) | |
| # Extract features from the query image | |
| query, predicted_hand = self.get_features(image_dir, source) | |
| # Perform k-nearest neighbors search | |
| similarities_dict = self.knn_search(db, query) | |
| if any(value > 0.9 for value in similarities_dict.values()): | |
| best_key_name = max(similarities_dict, key=similarities_dict.get) | |
| best_key = int(re.findall(r'(?<=numeral)\d+', best_key_name)[0]) | |
| #best_match = self.retrieve_best_match_patch(best_key_name, source) | |
| else: | |
| _, best_key_name = self.compute_results(image_dir, similarities_dict) | |
| if best_key_name == None: | |
| print("Best key name is None.") | |
| best_key = int(re.findall(r'(?<=numeral)\d+', best_key_name)[0]) | |
| #best_match = self.retrieve_best_match_patch(best_key_name, source) | |
| return best_key, predicted_hand#, best_match | |
| if __name__ == "__main__": | |
| checkpoints_pose = "data/pose" | |
| checkpoint_dino = "data/dino/hand/teacher_checkpoint.pth" | |
| image_dir = "img/numeral1.jpg" | |
| data_db_path = "SignLLaVA-app/Numerals/Numerals_new" | |
| db_path = "sign_db.npz" | |
| k=15 | |
| handler = DatabaseHandler(checkpoints_pose, checkpoint_dino, db_path, data_db_path, k) | |
| handler.load_models() | |
| prediction = handler.predict(image_dir) | |
| print(prediction) |