| """
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| ================================================================================
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| DMX API Batch Image Analysis Script (with Progress & ETA)
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| ================================================================================
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| Description:
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| Batch analyzes local images using specified multimodal model via DMX API,
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| and saves results as .txt files named after each image.
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| ================================================================================
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| """
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| import base64
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| import json
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| import os
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| import time
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| import glob
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| from pathlib import Path
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| from datetime import datetime, timedelta
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|
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| import requests
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| def encode_image(image_path):
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| """Encode local image file to Base64 string"""
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| with open(image_path, "rb") as image_file:
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| return base64.b64encode(image_file.read()).decode("utf-8")
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| def get_image_files(annotations_dir):
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| """
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| Recursively find all image files from Annotations directory
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| (assumes images share the same name as annotations but with common image extensions)
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| Note: Actual images may not be in Annotations directory, but in sibling directories like JPEGImages or images.
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| This assumes images are in the same level as Annotations, or Annotations contains images (adjust based on your needs)
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| """
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| image_extensions = ['*.jpg', '*.jpeg', '*.png', '*.bmp', '*.tiff', '*.webp']
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| image_paths = []
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| for ext in image_extensions:
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| image_paths.extend(glob.glob(os.path.join(annotations_dir, '**', ext), recursive=True))
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| return sorted(image_paths)
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| BASE_URL = "https://www.dmxapi.cn/"
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| API_ENDPOINT = BASE_URL + "v1/chat/completions"
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| API_KEY = "sk-***"
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| MODEL_NAME = "claude-opus-4-5-20251101"
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| ANNOTATIONS_ROOT = "/path/to/your/DATA_PATH/test/Annotations"
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| MODEL_RESULTS_PATH = "/path/to/your/model_generate_results_dir/%s" % MODEL_NAME
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| os.makedirs(MODEL_RESULTS_PATH, exist_ok=True)
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| OUTPUT_DIR = os.path.join(MODEL_RESULTS_PATH, MODEL_NAME)
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| os.makedirs(OUTPUT_DIR, exist_ok=True)
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| image_paths = get_image_files(ANNOTATIONS_ROOT)
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| total_images = len(image_paths)
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| if total_images == 0:
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| print(f"[!] No image files found in {ANNOTATIONS_ROOT} and its subdirectories.")
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| exit(1)
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| print(f"[INFO] Found {total_images} images, results will be saved to: {OUTPUT_DIR}")
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| prompt = (
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| "Please analyze the input industrial scene image according to the following criteria:\n\n"
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| "Task Objectives:\n"
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| "1. Describe key visual elements in the image (e.g., personnel behavior, environmental conditions, object distribution, hazard sources, etc.).\n"
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| "2. Assess the safety level of the scene into one of four categories:\n"
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| " - Level one: High-risk hazards present that could lead to severe incidents (e.g., open flame, smoke, personnel collapse, oil leakage, etc.);\n"
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| " - Level two: Moderate risks present that may cause safety issues or violations (e.g., using a mobile phone, oil accumulation, foreign objects, missing required PPE, etc.);\n"
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| " - Level three: Minor hazards present that require attention but are not urgent (e.g., water pooling, small foreign objects, missing face mask, etc.);\n"
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| " - no abnormalities observed: No obvious abnormalities or risk factors.\n\n"
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| "Assessment Criteria (by industry):\n"
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| "| Safety Level | Oil & Gas / Chemical | Coal Conveyor Gallery | Tunnel | Power | Metallurgy |\n"
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| "|--------------|----------------------|------------------------|--------|-------|------------|\n"
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| "| Level one | Open flame, smoke, no hard hat, no gloves, no mask, smoking, personnel collapse, oil leakage | Open flame, smoke, no hard hat, smoking, personnel collapse | Open flame, smoke, non-motorized vehicles in fast lane, wood, metal, personnel collapse | Open flame, smoke, smoking, personnel collapse | Open flame, smoke, no hard hat, personnel collapse |\n"
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| "| Level two | Water pooling, using mobile phone | Using mobile phone, no gloves, no mask, foreign objects (plastic bags, bottles, foam, metal, paper) | Foam, plastic bags, plastic bottles, no hard hat, cabinet door open | Water pooling, oil accumulation, using mobile phone, foreign objects (plastic bags, bottles, foam, metal, paper), no hard hat, no gloves, cabinet door open | No gloves, no mask, smoking |\n"
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| "| Level three | Foreign objects | Water pooling | Water pooling, oil accumulation, using mobile phone, no gloves, no mask, smoking | No mask | Water pooling, oil accumulation, using mobile phone, foreign objects (plastic bags, bottles, foam, metal, paper) |\n\n"
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| "Notes:\n"
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| "- If the image cannot be clearly recognized, output 'Unrecognizable' and explain the reason in the [Image Description].\n"
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| "- If the scene exhibits characteristics of multiple industries, prioritize the most relevant industry category.\n"
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| "- If no risk factors are present, assign the safety level as 'no abnormalities observed'."
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| "Output Format Requirements:\n"
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| "Strictly follow the structure below (do not add extra content,only include Image Description and Safety Level):\n\n"
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| "[Image Description]\n"
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| "[Detailed description of the scene, human actions, environmental features, visible objects, etc.]\n\n"
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| "[Safety Level]\n"
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| "[Level one / Level two / Level three / no abnormalities observed]\n\n"
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| )
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| headers = {
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| "Content-Type": "application/json",
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| "Authorization": f"{API_KEY}"
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| }
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| processed = 0
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| total_time = 0.0
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| start_all = time.time()
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| for img_path in image_paths:
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| img_name = os.path.splitext(os.path.basename(img_path))[0]
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| output_file = os.path.join(OUTPUT_DIR, f"{img_name}.txt")
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| if os.path.exists(output_file):
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| print(f"[SKIP] Already exists: {img_name}")
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| processed += 1
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| continue
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| try:
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| image_data = encode_image(img_path)
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| except FileNotFoundError:
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| print(f"[ERROR] Image not found: {img_path}")
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| continue
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| except Exception as e:
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| print(f"[ERROR] Encoding failed {img_path}: {e}")
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| continue
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| payload = {
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| "model": MODEL_NAME,
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| "messages": [
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| {
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| "role": "user",
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| "content": [
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| {"type": "text", "text": prompt},
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| {"type": "image_url", "image_url": {"url": f"data:image/png;base64,{image_data}"}}
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| ]
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| }
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| ],
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| "temperature": 0.1
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| }
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| start = time.time()
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| try:
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| response = requests.post(API_ENDPOINT, headers=headers, json=payload, timeout=60)
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| elapsed = time.time() - start
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| total_time += elapsed
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| processed += 1
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| if response.status_code != 200:
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| error_msg = f"HTTP {response.status_code}: {response.text}"
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| print(f"[FAIL] {img_name} - {error_msg}")
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| with open(output_file, 'w') as f:
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| f.write(f"[API ERROR] {error_msg}\n")
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| continue
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| result = response.json()
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| if "choices" in result and len(result["choices"]) > 0:
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| content = result["choices"][0]["message"]["content"]
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| with open(output_file, 'w', encoding='utf-8') as f:
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| f.write(content)
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| print(f"[OK] {img_name} ({elapsed:.2f}s)")
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| else:
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| error_detail = result.get("error", "Unknown error")
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| print(f"[FAIL] {img_name} - No valid response: {error_detail}")
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| with open(output_file, 'w') as f:
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| f.write(f"[NO RESPONSE] {error_detail}\n")
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|
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| except Exception as e:
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| elapsed = time.time() - start
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| total_time += elapsed
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| processed += 1
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| print(f"[EXCEPTION] {img_name}: {e}")
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| with open(output_file, 'w') as f:
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| f.write(f"[EXCEPTION] {str(e)}\n")
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| continue
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| if processed > 0:
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| avg_time = total_time / processed
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| remaining = total_images - processed
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| eta_seconds = avg_time * remaining
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| eta_str = str(timedelta(seconds=int(eta_seconds)))
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| print(f" -> Progress: {processed}/{total_images} | Avg time: {avg_time:.2f}s | ETA: {eta_str}")
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| total_elapsed = time.time() - start_all
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| print("\n" + "=" * 80)
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| print(f"Batch processing completed!")
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| print(f"Total images: {total_images}")
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| print(f"Processed/Skipped: {processed}")
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| print(f"Total time: {timedelta(seconds=int(total_elapsed))}")
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| print(f"Results saved to: {OUTPUT_DIR}")
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| print("=" * 80)
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|