Python bindings for event camera utilities
Project description
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An event camera processing library with Rust backend and Python bindings, designed for scalable data processing with real-world event camera datasets.
Core Features
- Universal Format Support: Load data from H5, AEDAT, EVT2/3, AER, and text formats
- Automatic Format Detection: No need to specify format types manually
- Polars DataFrame Integration: High-performance DataFrame operations with up to 360M events/s filtering
- Event Filtering: Comprehensive filtering with temporal, spatial, and polarity options
- Event Representations: Stacked histograms, voxel grids, and mixed density stacks
- Neural Network Models: E2VID model loading and inference
- Real-time Data Processing: Handle large datasets (550MB+ files) efficiently
- Polarity Encoding: Automatic conversion between 0/1 and -1/1 polarities
- Rust Performance: Memory-safe, high-performance backend with Python bindings
In Development: Advanced neural network processing (hopefully with Rust
backend, maybe Candle) Real-time visualization (Only simulated working at the
moment — see wasm-evlib)
Note: The Rust backend currently focuses on data loading and processing, with Python modules providing advanced features like filtering and representations.
- Quick Start
- Installation
- Polars DataFrame Integration
- Available Python Modules
- Examples
- Development
- Community & Support
- License
Quick Start
Basic Usage
import evlib
# Load events from any supported format (automatic detection)
df = evlib.load_events("data/slider_depth/events.txt").collect(engine='streaming')
# Or load as LazyFrame for memory-efficient processing
lf = evlib.load_events("data/slider_depth/events.txt")
# Basic event information
print(f"Loaded {len(df)} events")
print(f"Resolution: {df['x'].max()} x {df['y'].max()}")
print(f"Duration: {df['timestamp'].max() - df['timestamp'].min()}")
# Convert to NumPy arrays for compatibility
x_coords = df['x'].to_numpy()
y_coords = df['y'].to_numpy()
timestamps = df['timestamp'].to_numpy()
polarities = df['polarity'].to_numpy()
Advanced Filtering
import evlib
import evlib.filtering as evf
# High-level preprocessing pipeline
processed = evf.preprocess_events(
"data/slider_depth/events.txt",
t_start=0.1, t_end=0.5,
roi=(100, 500, 100, 400),
polarity=1,
remove_hot_pixels=True,
remove_noise=True,
hot_pixel_threshold=99.9,
refractory_period_us=1000
)
# Individual filters (work with LazyFrames)
events = evlib.load_events("data/slider_depth/events.txt")
time_filtered = evf.filter_by_time(events, t_start=0.1, t_end=0.5)
spatial_filtered = evf.filter_by_roi(time_filtered, x_min=100, x_max=500, y_min=100, y_max=400)
clean_events = evf.filter_hot_pixels(spatial_filtered, threshold_percentile=99.9)
denoised = evf.filter_noise(clean_events, method="refractory", refractory_period_us=1000)
Event Representations
import evlib
import evlib.representations as evr
# TODO: Representation functions have Polars compatibility issues
# Create stacked histogram (replaces RVT preprocessing)
# events = evlib.load_events("data/slider_depth/events.txt")
# events_df = events.collect()
# hist = evr.create_stacked_histogram_py(
# events_df,
# _height=480, _width=640,
# nbins=10, window_duration_ms=50.0,
# _count_cutoff=10
# )
# Create mixed density stack representation
# density = evr.create_mixed_density_stack_py(
# events_df,
# _height=480, _width=640,
# nbins=10, window_duration_ms=50.0
# )
# TODO: High-level preprocessing for neural networks
# data = evr.preprocess_for_detection(
# "data/slider_depth/events.txt",
# representation="stacked_histogram",
# height=480, width=640,
# nbins=10, window_duration_ms=50
# )
# TODO: Performance benchmarking against RVT
# results = evr.benchmark_vs_rvt("data/slider_depth/events.txt", height=480, width=640)
Installation
Basic Installation
pip install evlib
# For Polars DataFrame support (recommended)
pip install evlib[polars]
Development Installation
# Clone the repository
git clone https://github.com/tallamjr/evlib.git
cd evlib
# Create virtual environment
python -m venv .venv
source .venv/bin/activate # On Windows: .venv\Scripts\activate
# Install in development mode with all features
pip install -e ".[dev,polars]"
# Build the Rust extensions
maturin develop
System Dependencies
# Ubuntu/Debian
sudo apt install libhdf5-dev pkg-config
# macOS
brew install hdf5 pkg-config
Performance-Optimized Installation
For optimal performance, ensure you have the recommended system configuration:
System Requirements:
- RAM: 8GB+ recommended for files >100M events
- Python: 3.10+ (3.12 recommended for best performance)
- Polars: Latest version for advanced DataFrame operations
Installation for Performance:
# Install with Polars support (recommended)
pip install "evlib[polars]"
# For development with all performance features
pip install "evlib[dev,polars]"
# Verify installation with benchmark
python -c "import evlib; print('evlib installed successfully')"
python benchmark_memory.py # Test memory efficiency
Optional Performance Dependencies:
# For advanced memory monitoring
pip install psutil
# For parallel processing (already included in dev)
pip install multiprocessing-logging
Polars DataFrame Integration
evlib provides comprehensive Polars DataFrame support for high-performance event data processing:
Key Benefits
- Performance: 1.9M+ events/s loading speed, 360M+ events/s filtering speed
- Memory Efficiency: ~23 bytes/event (5x better than typical 110 bytes/event)
- Expressive Queries: SQL-like operations for complex data analysis
- Lazy Evaluation: Query optimization for better performance
- Ecosystem Integration: Seamless integration with data science tools
API Overview
Loading Data
import evlib
# Load as LazyFrame (recommended)
events = evlib.load_events("data/slider_depth/events.txt")
df = events.collect() # Collect to DataFrame when needed
# Automatic format detection and optimization
events = evlib.load_events("data/slider_depth/events.txt") # EVT2 format automatically detected
print(f"Format: {evlib.formats.detect_format('data/slider_depth/events.txt')}")
print(f"Description: {evlib.formats.get_format_description('EVT2')}")
Advanced Features
import evlib
import polars as pl
# Chain operations with LazyFrames for optimal performance
events = evlib.load_events("data/slider_depth/events.txt")
result = events.filter(pl.col("polarity") == 1).with_columns([
pl.col("timestamp").dt.total_microseconds().alias("time_us"),
(pl.col("x") + pl.col("y")).alias("diagonal_pos")
]).collect()
# Memory-efficient temporal analysis
time_stats = events.with_columns([
pl.col("timestamp").dt.total_microseconds().alias("time_us")
]).group_by([
(pl.col("time_us") // 1_000_000).alias("time_second") # Group by second
]).agg([
pl.len().alias("event_count"),
pl.col("polarity").mean().alias("avg_polarity")
]).collect()
# Combine with filtering module for complex operations
import evlib.filtering as evf
filtered = evf.filter_by_time(events, t_start=0.1, t_end=0.5)
analysis = filtered.with_columns([
pl.col("timestamp").dt.total_microseconds().alias("time_us")
]).collect()
Utility Functions
import evlib
import polars as pl
import evlib.filtering as evf
# Built-in format detection
format_info = evlib.formats.detect_format("data/slider_depth/events.txt")
print(f"Detected format: {format_info}")
# Spatial filtering using dedicated filtering functions (preferred)
events = evlib.load_events("data/slider_depth/events.txt")
spatial_filtered = evf.filter_by_roi(events, x_min=100, x_max=200, y_min=50, y_max=150)
# Or using direct Polars operations
manual_filtered = events.filter(
(pl.col("x") >= 100) & (pl.col("x") <= 200) &
(pl.col("y") >= 50) & (pl.col("y") <= 150)
)
# Temporal analysis with Polars operations
rates = events.with_columns([
pl.col("timestamp").dt.total_microseconds().alias("time_us")
]).group_by([
(pl.col("time_us") // 10_000).alias("time_10ms") # Group by 10ms
]).agg([
pl.len().alias("event_rate"),
pl.col("polarity").mean().alias("avg_polarity")
]).collect()
# TODO: Save functions have type compatibility issues
# Save processed data
# processed = evf.preprocess_events("data/slider_depth/events.txt", t_start=0.1, t_end=0.5)
# processed_df = processed.collect()
# x, y, t_us, p = processed_df.select(["x", "y", "timestamp", "polarity"]).to_numpy().T
# Convert microseconds to seconds for save function
# t = t_us.astype('float64') / 1_000_000
# evlib.formats.save_events_to_hdf5(x, y, t, p, "output.h5")
Performance Benchmarks
Benchmark Results:
- Loading Speed: 1.9M+ events/second average across formats
- Filter Speed: 360M+ events/second for complex filtering operations
- Memory Efficiency: ~23 bytes/event
- Format Performance: RAW binary (2.6M events/s) > HDF5 (2.5M events/s) > Text (0.6M events/s)
Benchmarking and Monitoring
Run performance benchmarks to verify optimizations:
# Verify README performance claims and generate plots
python benches/benchmark_performance_readme.py
# Memory efficiency benchmark
python benches/benchmark_memory.py
# Test with your own data
python -c "
import evlib
import time
start = time.time()
events = evlib.load_events('data/slider_depth/events.txt')
df = events.collect()
print(f'Loaded {len(df):,} events in {time.time()-start:.2f}s')
print(f'Format: {evlib.detect_format(\"data/slider_depth/events.txt\")}')
print(f'Memory per event: {df.estimated_size() / len(df):.1f} bytes')
"
Performance Examples
Optimal Loading for Different File Sizes
import evlib
import evlib.filtering as evf
import polars as pl
# Small files (<5M events) - Direct loading
events_small = evlib.load_events("data/slider_depth/events.txt")
df_small = events_small.collect()
# Large files (>5M events) - Automatic streaming
events_large = evlib.load_events("data/slider_depth/events.txt")
# Same API, automatically uses streaming for memory efficiency
# Memory-efficient filtering on large datasets using filtering module
filtered = evf.filter_by_time(events_large, t_start=1.0, t_end=2.0)
positive_events = evf.filter_by_polarity(filtered, polarity=1)
# Or using direct Polars operations
manual_filtered = events_large.filter(
(pl.col("timestamp").dt.total_microseconds() / 1_000_000 > 1.0) &
(pl.col("polarity") == 1)
).collect()
Memory Monitoring
import evlib
import psutil
import os
def monitor_memory():
process = psutil.Process(os.getpid())
return process.memory_info().rss / 1024 / 1024 # MB
# Monitor memory usage during loading
initial_mem = monitor_memory()
events = evlib.load_events("data/slider_depth/events.txt")
df = events.collect()
peak_mem = monitor_memory()
print(f"Memory used: {peak_mem - initial_mem:.1f} MB")
print(f"Memory per event: {(peak_mem - initial_mem) * 1024 * 1024 / len(df):.1f} bytes")
print(f"Polars DataFrame size: {df.estimated_size() / 1024 / 1024:.1f} MB")
Troubleshooting Large Files
Memory Constraints
- Automatic Streaming: Files >5M events use streaming by default
- LazyFrame Operations: Memory-efficient processing without full materialization
- Memory Monitoring: Use
benchmark_memory.pyto track usage - System Requirements: Recommend 8GB+ RAM for files >100M events
Performance Tuning
- Optimal Chunk Size: System automatically calculates based on available memory
- LazyFrame Operations: Use
.lazy()for complex filtering chains - Memory-Efficient Formats: RAW binary formats provide best performance, followed by HDF5
- Progress Reporting: Large files show progress during loading
Common Issues and Solutions
Issue: Out of memory errors
import evlib
import evlib.filtering as evf
# Solution: Use filtering before collecting (streaming activates automatically)
events = evlib.load_events("data/slider_depth/events.txt")
# Streaming activates automatically for files >5M events
# Apply filtering before collecting to reduce memory usage
filtered = evf.filter_by_time(events, t_start=0.1, t_end=0.5)
df = filtered.collect() # Only collect when needed
# Or stream to disk using Polars
filtered.sink_parquet("filtered_events.parquet")
Issue: Slow loading performance
import evlib
import evlib.filtering as evf
import polars as pl
# Solution: Use LazyFrame for complex operations and filtering module
events = evlib.load_events("data/slider_depth/events.txt")
# Use filtering module for optimized operations
result = evf.filter_by_roi(events, x_min=0, x_max=640, y_min=0, y_max=480)
df = result.collect()
# Or chain Polars operations
result = events.filter(pl.col("polarity") == 1).select(["x", "y", "timestamp"]).collect()
Issue: Memory usage higher than expected
import evlib
# Solution: Monitor and verify optimization
events = evlib.load_events("data/slider_depth/events.txt")
df = events.collect()
print(f"Memory efficiency: {df.estimated_size() / len(df)} bytes/event")
print(f"DataFrame schema: {df.schema}")
print(f"Number of events: {len(df):,}")
# Check format detection
format_info = evlib.formats.detect_format("data/slider_depth/events.txt")
print(f"Format: {format_info}")
Available Python Modules
evlib provides several Python modules for different aspects of event processing:
Core Modules
evlib.formats: Direct Rust access for format loading and detectionevlib.filtering: High-performance event filtering with Polarsevlib.representations: Event representations (stacked histograms, voxel grids)evlib.models: Neural network model loading and inference (Under construction)
Module Overview
import evlib
import evlib.filtering as evf
import evlib.representations as evr
# Core event loading (returns Polars LazyFrame)
events = evlib.load_events("data/slider_depth/events.txt")
# Format detection and description
format_info = evlib.formats.detect_format("data/slider_depth/events.txt")
description = evlib.formats.get_format_description("HDF5")
# Advanced filtering
filtered = evf.preprocess_events("data/slider_depth/events.txt", t_start=0.1, t_end=0.5)
time_filtered = evf.filter_by_time(events, t_start=0.1, t_end=0.5)
# TODO: Event representations have Polars compatibility issues
# Event representations (need to load data first)
# events_df = events.collect()
# hist = evr.create_stacked_histogram_py(events_df, _height=480, _width=640, nbins=10)
# voxel = evr.create_voxel_grid_py(events_df, _height=480, _width=640, nbins=5)
# Neural network models (limited functionality)
from evlib.models import ModelConfig # If available
# TODO: Data saving functions have type compatibility issues
# Data saving (need to get arrays first)
# df = events.collect()
# x, y, t_us, p = df.select(["x", "y", "timestamp", "polarity"]).to_numpy().T
# Convert microseconds to seconds for save functions
# t = t_us.astype('float64') / 1_000_000
# evlib.formats.save_events_to_hdf5(x, y, t, p, "output.h5")
# evlib.formats.save_events_to_text(x, y, t, p, "output.txt")
Examples
Run examples:
# Test all notebooks
pytest --nbmake examples/
# Run specific examples
python examples/simple_example.py
python examples/filtering_demo.py
python examples/stacked_histogram_demo.py
Development
Testing
Core Testing
# Run all tests (Python and Rust)
pytest
cargo test
# Test specific modules
pytest tests/test_filtering.py
pytest tests/test_representations.py
pytest tests/test_evlib_exact_match.py
# Test notebooks (including examples)
pytest --nbmake examples/
# Test with coverage
pytest --cov=evlib
Documentation Testing
All code examples in the documentation are automatically tested to ensure they work correctly:
# Test all documentation examples
pytest --markdown-docs docs/
# Test specific documentation file
pytest --markdown-docs docs/getting-started/quickstart.md
# Use the convenient test script
python scripts/test_docs.py --list # List testable files
python scripts/test_docs.py --report # Generate report
# Test specific documentation section
pytest --markdown-docs docs/user-guide/
pytest --markdown-docs docs/getting-started/
Code Quality
# Format code
black python/ tests/ examples/
cargo fmt
# Run linting
ruff check python/ tests/
cargo clippy
# Check types
mypy python/evlib/
Building
Requirements
- Rust: Stable toolchain (see
rust-toolchain.toml) - Python: ≥3.10 (3.12 recommended)
- Maturin: For building Python extensions
# Development build
maturin develop --features python # python required to register python modules
# Build with features
maturin develop --features polars
maturin develop --features pytorch
# Release build
maturin build --release
Community & Support
{ width=100% }
- GitHub: tallamjr/evlib
- Issues: Report bugs and request features
- Discussions: Community Q&A and ideas
License
MIT License - see LICENSE.md for details.
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