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Detection Vector Tracker for EnergySnake - Fixed Version
This module provides utilities to track high-dimensional vectors for each detection box
before YOLO decoder, maintaining correspondence with detection boxes.
"""
import torch
import numpy as np
from typing import Dict, List, Tuple, Optional
from dataclasses import dataclass, field
@dataclass
class DetectionVector:
"""
Represents a single detection with its high-dimensional vector and corresponding box.
"""
# High-dimensional vector before YOLO decoder (flattened from feature map)
vector: torch.Tensor # Shape: [C] where C is the feature dimension
# Detection box information [x1, y1, x2, y2, score, class_id]
bbox: torch.Tensor # Shape: [6]
# Position information for correspondence
grid_pos: Tuple[int, int] # (h_idx, w_idx) position on feature grid
# Feature map location info
feature_map_idx: int # Index in the flattened feature map (0-based)
# Additional metadata
confidence: float
class_id: int
image_idx: int # Batch index
@dataclass
class DetectionVectorBatch:
"""
Container for all detection vectors in a batch.
"""
detections: List[DetectionVector] = field(default_factory=list)
# Raw tensors for batch processing
raw_vectors: torch.Tensor = None # [N, C] all vectors concatenated
raw_bboxes: torch.Tensor = None # [N, 6] all bboxes concatenated
raw_yolo_output: torch.Tensor = None # [B, no, HW] original YOLO output
# Feature map dimensions
feature_h: int = 0
feature_w: int = 0
batch_size: int = 0
# Vector dimension per detection
vector_dim: int = 0
def add_detection(self, detection: DetectionVector):
"""Add a detection to the batch."""
self.detections.append(detection)
def finalize(self):
"""Convert list of detections to batch tensors."""
if not self.detections:
return
# Stack vectors and bboxes
self.raw_vectors = torch.stack([det.vector for det in self.detections])
self.raw_bboxes = torch.stack([det.bbox for det in self.detections])
def get_vectors_by_class(self, class_id: int) -> torch.Tensor:
"""Get all vectors for a specific class."""
if not self.detections:
return torch.empty(0, self.vector_dim)
class_vectors = [det.vector for det in self.detections if det.class_id == class_id]
return torch.stack(class_vectors) if class_vectors else torch.empty(0, self.vector_dim)
def get_bboxes_by_class(self, class_id: int) -> torch.Tensor:
"""Get all bboxes for a specific class."""
if not self.detections:
return torch.empty(0, 6)
class_bboxes = [det.bbox for det in self.detections if det.class_id == class_id]
return torch.stack(class_bboxes) if class_bboxes else torch.empty(0, 6)
class DetectionVectorTracker:
"""
Tracks high-dimensional vectors from YOLO detection head before decoder.
The YOLO detection head outputs high-dimensional features that are then decoded
into bounding boxes. This tracker captures those intermediate features.
"""
def __init__(self):
self.current_batch: Optional[DetectionVectorBatch] = None
self.history: List[DetectionVectorBatch] = []
# YOLO configuration (will be determined from actual model output)
self.reg_max = 16 # Default for YOLOv8
self.num_classes = 52 # Spinal structures
def extract_vectors_from_yolo_output(self,
yolo_output: torch.Tensor,
feature_maps: List[torch.Tensor],
detection_bboxes: torch.Tensor,
image_size: Tuple[int, int] = (544, 544)) -> DetectionVectorBatch:
"""
Extract high-dimensional vectors from YOLO output before decoder.
Args:
yolo_output: Raw YOLO output tensor [B, no, HW]
feature_maps: List of feature maps from YOLO backbone
detection_bboxes: Final detection boxes after NMS [B, M, 6]
image_size: Input image size (H, W)
Returns:
DetectionVectorBatch containing extracted vectors and correspondence
"""
batch_size, output_dim, hw = yolo_output.shape
print(f"Debug: yolo_output.shape = {yolo_output.shape}")
print(f"Debug: batch_size={batch_size}, output_dim={output_dim}, hw={hw}")
# Create new batch container
batch = DetectionVectorBatch(
feature_h=136, # Estimated for 544x544 input with 1/4 scaling
feature_w=136, # Estimated for 544x544 input with 1/4 scaling
batch_size=batch_size,
vector_dim=output_dim,
raw_yolo_output=yolo_output.clone()
)
# Get feature map dimensions from the actual feature maps if available
if feature_maps and len(feature_maps) > 0:
# Use the first (largest) feature map size (P2)
p2_shape = feature_maps[0].shape # [B, C, H, W]
batch.feature_h = p2_shape[2]
batch.feature_w = p2_shape[3]
print(f"Debug: Using feature map size from P2: {p2_shape}")
# Reshape YOLO output to feature grid format
yolo_reshaped = yolo_output.permute(0, 2, 1).contiguous() # [B, HW, no]
# Process each image in the batch
total_detections = 0
for batch_idx in range(batch_size):
# Get detections for this image
img_detections = detection_bboxes[batch_idx]
valid_detections = img_detections[img_detections[:, 4] > 0] # Filter by confidence
print(f"Debug: Batch {batch_idx}, valid detections: {len(valid_detections)}")
# Process each valid detection
for det_idx, detection in enumerate(valid_detections):
bbox = detection # [x1, y1, x2, y2, score, class_id]
confidence = float(detection[4])
class_id = int(detection[5])
# Find the best matching position in YOLO output
# Since YOLO output is flattened across multiple scales, we find the closest match
best_match_idx = self._find_best_yolo_position(
bbox, yolo_reshaped[batch_idx], image_size, feature_maps, hw
)
if best_match_idx is not None and best_match_idx < yolo_reshaped.shape[1]:
vector = yolo_reshaped[batch_idx, best_match_idx] # [output_dim]
# Estimate the grid position (this is approximate for multi-scale)
estimated_grid_size = int(np.sqrt(hw))
if estimated_grid_size * estimated_grid_size > hw:
estimated_grid_size = int(np.sqrt(hw))
grid_x = best_match_idx % estimated_grid_size
grid_y = best_match_idx // estimated_grid_size
# Create detection vector
det_vector = DetectionVector(
vector=vector,
bbox=bbox,
grid_pos=(int(grid_y), int(grid_x)),
feature_map_idx=best_match_idx,
confidence=confidence,
class_id=class_id,
image_idx=batch_idx
)
batch.add_detection(det_vector)
total_detections += 1
print(f"Debug: Total detections processed: {total_detections}")
# Finalize batch processing
batch.finalize()
# Store current batch
self.current_batch = batch
self.history.append(batch)
return batch
def _find_best_yolo_position(self, bbox, yolo_flat_output, image_size, feature_maps, hw):
"""
Find the best matching position in YOLO output for a given detection.
For multi-scale YOLO, this is an approximation that finds the closest spatial match.
"""
center_x = (bbox[0] + bbox[2]) / 2
center_y = (bbox[1] + bbox[3]) / 2
# Simple strategy: map center to flattened position
# This is approximate but works for tracking purposes
h, w = image_size
flat_positions = yolo_flat_output.shape[0]
# For YOLOv8-p2, the HW is the sum of all scale positions
# We'll use a simple linear mapping approach
# This gives us an approximate correspondence
# Map bbox center to normalized position [0, 1]
norm_x = center_x / w
norm_y = center_y / h
# Map to flattened position
flat_idx = int(norm_y * np.sqrt(flat_positions) * np.sqrt(flat_positions) + norm_x * np.sqrt(flat_positions))
# Ensure index is within bounds
if flat_idx >= flat_positions:
flat_idx = flat_positions - 1
if flat_idx < 0:
flat_idx = 0
return flat_idx
def get_vector_shape_info(self) -> Dict[str, any]:
"""
Get information about the vector shapes and dimensions.
Returns:
Dictionary containing shape information
"""
if not self.current_batch:
return {"error": "No batch processed yet"}
batch = self.current_batch
yolo_output = batch.raw_yolo_output
# YOLO output shape: [B, no, HW]
# where no = reg_max * 4 + num_classes
# reg_max = 16, so no = 16 * 4 + 52 = 116
reg_max = self.reg_max
num_classes = self.num_classes
output_channels = reg_max * 4 + num_classes # 64 + 52 = 116
return {
"yolo_output_shape": list(yolo_output.shape),
"output_channels": output_channels,
"regression_channels": reg_max * 4, # 64 channels for bbox regression
"classification_channels": num_classes, # 52 channels for classification
"feature_map_size": (batch.feature_h, batch.feature_w),
"total_positions": batch.feature_h * batch.feature_w,
"high_dim_vector_shape": [output_channels], # Shape of each detection's vector
"vector_breakdown": {
"bbox_regression": [reg_max * 4], # DFL channels for 4 bbox coordinates
"class_logits": [num_classes] # Raw class scores before sigmoid
}
}
def get_batch_summary(self) -> Dict[str, any]:
"""Get summary statistics for the current batch."""
if not self.current_batch:
return {"error": "No batch processed yet"}
batch = self.current_batch
# Count detections by class
class_counts = {}
for det in batch.detections:
class_counts[det.class_id] = class_counts.get(det.class_id, 0) + 1
# Confidence statistics
confidences = [det.confidence for det in batch.detections]
return {
"total_detections": len(batch.detections),
"detections_by_class": class_counts,
"confidence_stats": {
"mean": np.mean(confidences) if confidences else 0,
"min": np.min(confidences) if confidences else 0,
"max": np.max(confidences) if confidences else 0
},
"vector_stats": {
"shape": list(batch.raw_vectors.shape) if batch.raw_vectors is not None else None,
"mean_norm": float(torch.mean(torch.norm(batch.raw_vectors, dim=1))) if batch.raw_vectors is not None else 0
}
}
def clear_history(self):
"""Clear processing history."""
self.history.clear()
def save_vectors_to_file(self, filepath: str, batch_idx: int = -1):
"""
Save detection vectors to file.
Args:
filepath: Path to save the vectors
batch_idx: Index of batch to save (-1 for current/latest)
"""
if batch_idx == -1 and self.current_batch:
batch = self.current_batch
elif 0 <= batch_idx < len(self.history):
batch = self.history[batch_idx]
else:
raise ValueError(f"Invalid batch_idx: {batch_idx}")
save_data = {
"batch_info": {
"batch_size": batch.batch_size,
"feature_map_size": (batch.feature_h, batch.feature_w),
"vector_dim": batch.vector_dim,
"total_detections": len(batch.detections)
},
"detections": [
{
"vector": det.vector.cpu().numpy().tolist(),
"bbox": det.bbox.cpu().numpy().tolist(),
"grid_pos": det.grid_pos,
"confidence": det.confidence,
"class_id": det.class_id,
"image_idx": det.image_idx
}
for det in batch.detections
]
}
import json
with open(filepath, 'w') as f:
json.dump(save_data, f, indent=2) |