Files
wifi-densepose/v1/tests/integration/test_inference_pipeline.py
Claude 6ed69a3d48 feat: Complete Rust port of WiFi-DensePose with modular crates
Major changes:
- Organized Python v1 implementation into v1/ subdirectory
- Created Rust workspace with 9 modular crates:
  - wifi-densepose-core: Core types, traits, errors
  - wifi-densepose-signal: CSI processing, phase sanitization, FFT
  - wifi-densepose-nn: Neural network inference (ONNX/Candle/tch)
  - wifi-densepose-api: Axum-based REST/WebSocket API
  - wifi-densepose-db: SQLx database layer
  - wifi-densepose-config: Configuration management
  - wifi-densepose-hardware: Hardware abstraction
  - wifi-densepose-wasm: WebAssembly bindings
  - wifi-densepose-cli: Command-line interface

Documentation:
- ADR-001: Workspace structure
- ADR-002: Signal processing library selection
- ADR-003: Neural network inference strategy
- DDD domain model with bounded contexts

Testing:
- 69 tests passing across all crates
- Signal processing: 45 tests
- Neural networks: 21 tests
- Core: 3 doc tests

Performance targets:
- 10x faster CSI processing (~0.5ms vs ~5ms)
- 5x lower memory usage (~100MB vs ~500MB)
- WASM support for browser deployment
2026-01-13 03:11:16 +00:00

459 lines
20 KiB
Python

import pytest
import torch
import numpy as np
from unittest.mock import Mock, patch, MagicMock
from src.core.csi_processor import CSIProcessor
from src.core.phase_sanitizer import PhaseSanitizer
from src.models.modality_translation import ModalityTranslationNetwork
from src.models.densepose_head import DensePoseHead
class TestInferencePipeline:
"""Integration tests for inference pipeline following London School TDD principles"""
@pytest.fixture
def mock_csi_processor_config(self):
"""Configuration for CSI processor"""
return {
'window_size': 100,
'overlap': 0.5,
'filter_type': 'butterworth',
'filter_order': 4,
'cutoff_frequency': 50,
'normalization': 'minmax',
'outlier_threshold': 3.0
}
@pytest.fixture
def mock_sanitizer_config(self):
"""Configuration for phase sanitizer"""
return {
'unwrap_method': 'numpy',
'smoothing_window': 5,
'outlier_threshold': 2.0,
'interpolation_method': 'linear',
'phase_correction': True
}
@pytest.fixture
def mock_translation_config(self):
"""Configuration for modality translation network"""
return {
'input_channels': 6,
'output_channels': 256,
'hidden_channels': [64, 128, 256],
'kernel_sizes': [7, 5, 3],
'strides': [2, 2, 1],
'dropout_rate': 0.1,
'use_attention': True,
'attention_heads': 8,
'use_residual': True,
'activation': 'relu',
'normalization': 'batch'
}
@pytest.fixture
def mock_densepose_config(self):
"""Configuration for DensePose head"""
return {
'input_channels': 256,
'num_body_parts': 24,
'num_uv_coordinates': 2,
'hidden_channels': [128, 64],
'kernel_size': 3,
'padding': 1,
'dropout_rate': 0.1,
'use_deformable_conv': False,
'use_fpn': True,
'fpn_levels': [2, 3, 4, 5],
'output_stride': 4
}
@pytest.fixture
def inference_pipeline_components(self, mock_csi_processor_config, mock_sanitizer_config,
mock_translation_config, mock_densepose_config):
"""Create inference pipeline components for testing"""
csi_processor = CSIProcessor(mock_csi_processor_config)
phase_sanitizer = PhaseSanitizer(mock_sanitizer_config)
translation_network = ModalityTranslationNetwork(mock_translation_config)
densepose_head = DensePoseHead(mock_densepose_config)
return {
'csi_processor': csi_processor,
'phase_sanitizer': phase_sanitizer,
'translation_network': translation_network,
'densepose_head': densepose_head
}
@pytest.fixture
def mock_raw_csi_input(self):
"""Generate mock raw CSI input data"""
batch_size = 4
antennas = 3
subcarriers = 56
time_samples = 100
# Generate complex CSI data
real_part = np.random.randn(batch_size, antennas, subcarriers, time_samples)
imag_part = np.random.randn(batch_size, antennas, subcarriers, time_samples)
return real_part + 1j * imag_part
@pytest.fixture
def mock_ground_truth_densepose(self):
"""Generate mock ground truth DensePose annotations"""
batch_size = 4
height = 224
width = 224
num_parts = 24
# Segmentation masks
seg_masks = torch.randint(0, num_parts + 1, (batch_size, height, width))
# UV coordinates
uv_coords = torch.randn(batch_size, 2, height, width)
return {
'segmentation': seg_masks,
'uv_coordinates': uv_coords
}
def test_end_to_end_inference_pipeline_produces_valid_output(self, inference_pipeline_components, mock_raw_csi_input):
"""Test that end-to-end inference pipeline produces valid DensePose output"""
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
# Set models to evaluation mode
translation_network.eval()
densepose_head.eval()
# Act - Run the complete inference pipeline
with torch.no_grad():
# 1. Process CSI data
processed_csi = csi_processor.process_csi_batch(mock_raw_csi_input)
# 2. Sanitize phase information
sanitized_csi = phase_sanitizer.sanitize_phase_batch(processed_csi)
# 3. Translate CSI to visual features
visual_features = translation_network(sanitized_csi)
# 4. Generate DensePose predictions
densepose_output = densepose_head(visual_features)
# Assert
assert densepose_output is not None
assert isinstance(densepose_output, dict)
assert 'segmentation' in densepose_output
assert 'uv_coordinates' in densepose_output
seg_output = densepose_output['segmentation']
uv_output = densepose_output['uv_coordinates']
# Check output shapes
assert seg_output.shape[0] == mock_raw_csi_input.shape[0] # Batch size preserved
assert seg_output.shape[1] == 25 # 24 body parts + 1 background
assert uv_output.shape[0] == mock_raw_csi_input.shape[0] # Batch size preserved
assert uv_output.shape[1] == 2 # U and V coordinates
# Check output ranges
assert torch.all(uv_output >= 0) and torch.all(uv_output <= 1) # UV in [0, 1]
def test_inference_pipeline_handles_different_batch_sizes(self, inference_pipeline_components):
"""Test that inference pipeline handles different batch sizes"""
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
# Different batch sizes
small_batch = np.random.randn(1, 3, 56, 100) + 1j * np.random.randn(1, 3, 56, 100)
large_batch = np.random.randn(8, 3, 56, 100) + 1j * np.random.randn(8, 3, 56, 100)
# Set models to evaluation mode
translation_network.eval()
densepose_head.eval()
# Act
with torch.no_grad():
# Small batch
small_processed = csi_processor.process_csi_batch(small_batch)
small_sanitized = phase_sanitizer.sanitize_phase_batch(small_processed)
small_features = translation_network(small_sanitized)
small_output = densepose_head(small_features)
# Large batch
large_processed = csi_processor.process_csi_batch(large_batch)
large_sanitized = phase_sanitizer.sanitize_phase_batch(large_processed)
large_features = translation_network(large_sanitized)
large_output = densepose_head(large_features)
# Assert
assert small_output['segmentation'].shape[0] == 1
assert large_output['segmentation'].shape[0] == 8
assert small_output['uv_coordinates'].shape[0] == 1
assert large_output['uv_coordinates'].shape[0] == 8
def test_inference_pipeline_maintains_gradient_flow_during_training(self, inference_pipeline_components,
mock_raw_csi_input, mock_ground_truth_densepose):
"""Test that inference pipeline maintains gradient flow during training"""
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
# Set models to training mode
translation_network.train()
densepose_head.train()
# Create optimizer
optimizer = torch.optim.Adam(
list(translation_network.parameters()) + list(densepose_head.parameters()),
lr=0.001
)
# Act
optimizer.zero_grad()
# Forward pass
processed_csi = csi_processor.process_csi_batch(mock_raw_csi_input)
sanitized_csi = phase_sanitizer.sanitize_phase_batch(processed_csi)
visual_features = translation_network(sanitized_csi)
densepose_output = densepose_head(visual_features)
# Resize ground truth to match output
seg_target = torch.nn.functional.interpolate(
mock_ground_truth_densepose['segmentation'].float().unsqueeze(1),
size=densepose_output['segmentation'].shape[2:],
mode='nearest'
).squeeze(1).long()
uv_target = torch.nn.functional.interpolate(
mock_ground_truth_densepose['uv_coordinates'],
size=densepose_output['uv_coordinates'].shape[2:],
mode='bilinear',
align_corners=False
)
# Compute loss
loss = densepose_head.compute_total_loss(densepose_output, seg_target, uv_target)
# Backward pass
loss.backward()
# Assert - Check that gradients are computed
for param in translation_network.parameters():
if param.requires_grad:
assert param.grad is not None
assert not torch.allclose(param.grad, torch.zeros_like(param.grad))
for param in densepose_head.parameters():
if param.requires_grad:
assert param.grad is not None
assert not torch.allclose(param.grad, torch.zeros_like(param.grad))
def test_inference_pipeline_performance_benchmarking(self, inference_pipeline_components, mock_raw_csi_input):
"""Test inference pipeline performance for real-time requirements"""
import time
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
# Set models to evaluation mode for inference
translation_network.eval()
densepose_head.eval()
# Warm up (first inference is often slower)
with torch.no_grad():
processed_csi = csi_processor.process_csi_batch(mock_raw_csi_input)
sanitized_csi = phase_sanitizer.sanitize_phase_batch(processed_csi)
visual_features = translation_network(sanitized_csi)
_ = densepose_head(visual_features)
# Act - Measure inference time
start_time = time.time()
with torch.no_grad():
processed_csi = csi_processor.process_csi_batch(mock_raw_csi_input)
sanitized_csi = phase_sanitizer.sanitize_phase_batch(processed_csi)
visual_features = translation_network(sanitized_csi)
densepose_output = densepose_head(visual_features)
end_time = time.time()
inference_time = end_time - start_time
# Assert - Should meet real-time requirements (< 50ms for batch of 4)
assert inference_time < 0.05, f"Inference took {inference_time:.3f}s, expected < 0.05s"
def test_inference_pipeline_handles_edge_cases(self, inference_pipeline_components):
"""Test that inference pipeline handles edge cases gracefully"""
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
# Edge cases
zero_input = np.zeros((1, 3, 56, 100), dtype=complex)
noisy_input = np.random.randn(1, 3, 56, 100) * 100 + 1j * np.random.randn(1, 3, 56, 100) * 100
translation_network.eval()
densepose_head.eval()
# Act & Assert
with torch.no_grad():
# Zero input
zero_processed = csi_processor.process_csi_batch(zero_input)
zero_sanitized = phase_sanitizer.sanitize_phase_batch(zero_processed)
zero_features = translation_network(zero_sanitized)
zero_output = densepose_head(zero_features)
assert not torch.isnan(zero_output['segmentation']).any()
assert not torch.isnan(zero_output['uv_coordinates']).any()
# Noisy input
noisy_processed = csi_processor.process_csi_batch(noisy_input)
noisy_sanitized = phase_sanitizer.sanitize_phase_batch(noisy_processed)
noisy_features = translation_network(noisy_sanitized)
noisy_output = densepose_head(noisy_features)
assert not torch.isnan(noisy_output['segmentation']).any()
assert not torch.isnan(noisy_output['uv_coordinates']).any()
def test_inference_pipeline_memory_efficiency(self, inference_pipeline_components):
"""Test that inference pipeline is memory efficient"""
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
# Large batch to test memory usage
large_input = np.random.randn(16, 3, 56, 100) + 1j * np.random.randn(16, 3, 56, 100)
translation_network.eval()
densepose_head.eval()
# Act - Process in chunks to manage memory
chunk_size = 4
outputs = []
with torch.no_grad():
for i in range(0, large_input.shape[0], chunk_size):
chunk = large_input[i:i+chunk_size]
processed_chunk = csi_processor.process_csi_batch(chunk)
sanitized_chunk = phase_sanitizer.sanitize_phase_batch(processed_chunk)
feature_chunk = translation_network(sanitized_chunk)
output_chunk = densepose_head(feature_chunk)
outputs.append(output_chunk)
# Clear intermediate tensors to free memory
del processed_chunk, sanitized_chunk, feature_chunk
# Assert
assert len(outputs) == 4 # 16 samples / 4 chunk_size
for output in outputs:
assert output['segmentation'].shape[0] <= chunk_size
def test_inference_pipeline_deterministic_output(self, inference_pipeline_components, mock_raw_csi_input):
"""Test that inference pipeline produces deterministic output in eval mode"""
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
# Set models to evaluation mode
translation_network.eval()
densepose_head.eval()
# Act - Run inference twice
with torch.no_grad():
# First run
processed_csi_1 = csi_processor.process_csi_batch(mock_raw_csi_input)
sanitized_csi_1 = phase_sanitizer.sanitize_phase_batch(processed_csi_1)
visual_features_1 = translation_network(sanitized_csi_1)
output_1 = densepose_head(visual_features_1)
# Second run
processed_csi_2 = csi_processor.process_csi_batch(mock_raw_csi_input)
sanitized_csi_2 = phase_sanitizer.sanitize_phase_batch(processed_csi_2)
visual_features_2 = translation_network(sanitized_csi_2)
output_2 = densepose_head(visual_features_2)
# Assert - Outputs should be identical in eval mode
assert torch.allclose(output_1['segmentation'], output_2['segmentation'], atol=1e-6)
assert torch.allclose(output_1['uv_coordinates'], output_2['uv_coordinates'], atol=1e-6)
def test_inference_pipeline_confidence_estimation(self, inference_pipeline_components, mock_raw_csi_input):
"""Test that inference pipeline provides confidence estimates"""
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
translation_network.eval()
densepose_head.eval()
# Act
with torch.no_grad():
processed_csi = csi_processor.process_csi_batch(mock_raw_csi_input)
sanitized_csi = phase_sanitizer.sanitize_phase_batch(processed_csi)
visual_features = translation_network(sanitized_csi)
densepose_output = densepose_head(visual_features)
# Get confidence estimates
confidence = densepose_head.get_prediction_confidence(densepose_output)
# Assert
assert 'segmentation_confidence' in confidence
assert 'uv_confidence' in confidence
seg_conf = confidence['segmentation_confidence']
uv_conf = confidence['uv_confidence']
assert seg_conf.shape[0] == mock_raw_csi_input.shape[0]
assert uv_conf.shape[0] == mock_raw_csi_input.shape[0]
assert torch.all(seg_conf >= 0) and torch.all(seg_conf <= 1)
assert torch.all(uv_conf >= 0)
def test_inference_pipeline_post_processing(self, inference_pipeline_components, mock_raw_csi_input):
"""Test that inference pipeline post-processes predictions correctly"""
# Arrange
csi_processor = inference_pipeline_components['csi_processor']
phase_sanitizer = inference_pipeline_components['phase_sanitizer']
translation_network = inference_pipeline_components['translation_network']
densepose_head = inference_pipeline_components['densepose_head']
translation_network.eval()
densepose_head.eval()
# Act
with torch.no_grad():
processed_csi = csi_processor.process_csi_batch(mock_raw_csi_input)
sanitized_csi = phase_sanitizer.sanitize_phase_batch(processed_csi)
visual_features = translation_network(sanitized_csi)
raw_output = densepose_head(visual_features)
# Post-process predictions
processed_output = densepose_head.post_process_predictions(raw_output)
# Assert
assert 'body_parts' in processed_output
assert 'uv_coordinates' in processed_output
assert 'confidence_scores' in processed_output
body_parts = processed_output['body_parts']
assert body_parts.dtype == torch.long # Class indices
assert torch.all(body_parts >= 0) and torch.all(body_parts <= 24) # Valid class range