Files
vibe-spinda/identify.py
2026-05-08 09:22:50 -04:00

78 lines
2.7 KiB
Python

import os
import sys
import cv2
import torch
from src.models.inference import SpindaInference
from src.utils.resolver import SpindaResolver
from src.registry.database import SpindaRegistry
from src.data.high_fidelity_generator import generate_high_fidelity_spinda
from src.utils.detector import SpindaDetector # Import the detector
def identify_spinda(image_path: str):
if not os.path.exists(image_path):
print(f"Error: File {image_path} not found.")
return
print(f"--- Identifying Spinda in {image_path} ---")
# 1. Detect and Crop Spinda
detector = SpindaDetector()
cropped_img = detector.detect_and_crop(image_path)
if cropped_img is None:
print("Error: Could not detect Spinda in the image.")
return
# Save cropped image for debug/visual check
cv2.imwrite("detected_spinda_crop.png", cropped_img)
print("Detected Spinda saved to detected_spinda_crop.png")
# We need to save the cropped image to a temporary file for the inference model to read
temp_cropped_path = "temp_cropped_spinda.png"
cv2.imwrite(temp_cropped_path, cropped_img)
# 2. Inference (Model Prediction) using the cropped image
try:
inf = SpindaInference(model_path="models/best_spinda_model.pth")
coords, fingerprint = inf.predict(temp_cropped_path)
except Exception as e:
print(f"Error during inference: {e}")
os.remove(temp_cropped_path) # Clean up temp file
return
finally:
os.remove(temp_cropped_path) # Clean up temp file
print(f"Visual Fingerprint: {fingerprint}")
print(f"Predicted Grid Coordinates: {coords}")
# 3. Resolution (Mathematical PIDs)
resolved = SpindaResolver.resolve_fingerprint(fingerprint)
print("\nPossible PIDs:")
print(f" Standard (Gen 3-8, HOME): 0x{resolved['standard']}")
print(f" BDSP (Big-Endian Flip): 0x{resolved['bdsp']}")
# 4. Visual Verification
print("\nGenerating visual verification image...")
verify_img = generate_high_fidelity_spinda(int(resolved['standard'], 16))
cv2.imwrite("prediction_verify.png", verify_img)
print("Verification image saved to: prediction_verify.png")
# 5. Registry Lookup
reg = SpindaRegistry()
matches = reg.lookup_by_fingerprint(fingerprint)
if matches:
print("\nMatches found in Global Registry:")
for pid in matches:
print(f" - Registered PID: 0x{pid}")
else:
print("\nNo matching entries in Global Registry.")
print("\nNote: Accuracy depends on model training progress.")
if __name__ == "__main__":
if len(sys.argv) < 2:
print("Usage: python identify.py <image_path>")
else:
identify_spinda(sys.argv[1])