Skip to main content

Python bindings for event camera utilities

Project description

evlib logo

evlib: Event Camera Data Processing Library

PyPI Version Python Versions Documentation Python Rust License

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

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

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.py to 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 detection
  • evlib.filtering: High-performance event filtering with Polars
  • evlib.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

xkcd{ 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.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distributions

If you're not sure about the file name format, learn more about wheel file names.

evlib-0.4.2-cp312-cp312-manylinux_2_39_x86_64.whl (23.9 MB view details)

Uploaded CPython 3.12manylinux: glibc 2.39+ x86-64

evlib-0.4.2-cp312-cp312-macosx_11_0_arm64.whl (13.6 MB view details)

Uploaded CPython 3.12macOS 11.0+ ARM64

evlib-0.4.2-cp311-cp311-manylinux_2_39_x86_64.whl (23.9 MB view details)

Uploaded CPython 3.11manylinux: glibc 2.39+ x86-64

evlib-0.4.2-cp311-cp311-macosx_11_0_arm64.whl (13.6 MB view details)

Uploaded CPython 3.11macOS 11.0+ ARM64

evlib-0.4.2-cp310-cp310-manylinux_2_39_x86_64.whl (23.9 MB view details)

Uploaded CPython 3.10manylinux: glibc 2.39+ x86-64

evlib-0.4.2-cp310-cp310-macosx_11_0_arm64.whl (13.6 MB view details)

Uploaded CPython 3.10macOS 11.0+ ARM64

File details

Details for the file evlib-0.4.2-cp312-cp312-manylinux_2_39_x86_64.whl.

File metadata

File hashes

Hashes for evlib-0.4.2-cp312-cp312-manylinux_2_39_x86_64.whl
Algorithm Hash digest
SHA256 b0565e1440372bb69fd0c4d83f82308662dfb83b87fc9deeddd9390fbff811bd
MD5 0a054276d3b706cffdb037ab78223075
BLAKE2b-256 95a21d0c4acd4f5f5a0d14f4ac6e9181c48d2c14cf3877dd36cc58ecc4db0eba

See more details on using hashes here.

File details

Details for the file evlib-0.4.2-cp312-cp312-macosx_11_0_arm64.whl.

File metadata

File hashes

Hashes for evlib-0.4.2-cp312-cp312-macosx_11_0_arm64.whl
Algorithm Hash digest
SHA256 f1ae6ec9ab574673aa5fc677fa03f56265283d31e25dd67778b5b13f66b68ad1
MD5 a84c87dee59f1075ed3e80910eebb194
BLAKE2b-256 6f9b3eb94fd74fd6da3093cc6a59401af424eb75eb6417eb5ce229a44917410f

See more details on using hashes here.

File details

Details for the file evlib-0.4.2-cp311-cp311-manylinux_2_39_x86_64.whl.

File metadata

File hashes

Hashes for evlib-0.4.2-cp311-cp311-manylinux_2_39_x86_64.whl
Algorithm Hash digest
SHA256 1a542d5e3611bf7474467f19fe73d9527f59fbcacb96a8156084284422e4cf4b
MD5 eff24a930f496354313493c76e1c5de4
BLAKE2b-256 cdfac553757446317dd0d9e9431cf2f69b2504b194f9338eeb995dcb37099f30

See more details on using hashes here.

File details

Details for the file evlib-0.4.2-cp311-cp311-macosx_11_0_arm64.whl.

File metadata

File hashes

Hashes for evlib-0.4.2-cp311-cp311-macosx_11_0_arm64.whl
Algorithm Hash digest
SHA256 ef0eb0aaeec0ee5b6197280379a17cbbe1ecfe5de3878a07030068bafeb27799
MD5 acfe045020d0c40607e460a011b3c415
BLAKE2b-256 2b860d9f881ab1cfb45cfb94e725154901ad2d585ca2727069d2d9d478e63499

See more details on using hashes here.

File details

Details for the file evlib-0.4.2-cp310-cp310-manylinux_2_39_x86_64.whl.

File metadata

File hashes

Hashes for evlib-0.4.2-cp310-cp310-manylinux_2_39_x86_64.whl
Algorithm Hash digest
SHA256 2cf4e5eb548637a8098501bc4342dfeaf587929c169ba395ab83a132a6368335
MD5 fad507b139105aeb2201763fc32e9517
BLAKE2b-256 85badd4809f93b137376d6aaffa006166eedbf0e32812476a556209cb48e3a1e

See more details on using hashes here.

File details

Details for the file evlib-0.4.2-cp310-cp310-macosx_11_0_arm64.whl.

File metadata

File hashes

Hashes for evlib-0.4.2-cp310-cp310-macosx_11_0_arm64.whl
Algorithm Hash digest
SHA256 92712d50faaea224d08482391281ff004cec1f3c201d9d90bcffc15871f0f701
MD5 09a975365d88af4b5832a7e51b24c8fb
BLAKE2b-256 ba566ec538ad7c44ec8549894a0419ac161f8261d9afc10db92bf414f2739dd4

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page