This is an early release of pbrt-v4, the rendering system that will be described in the forthcoming fourth edition of Physically Based Rendering: From Theory to Implementation. (The printed book will be available in mid-February 2023; a few chapters will be made available in late Fall of 2022; and the full contents of the book will be freely available six months after the book's release, like the third edition is already.)
We are making this code available for hardy adventurers; it's not yet extensively documented, but if you are familiar with previous versions of pbrt, you should be able to make your way around it. Our hope is that the system will be useful to some people in its current form and that any bugs in the current implementation might be found now, allowing us to correct them before the book is final.
- A number of scenes for pbrt-v4 are available in a git repository.
- The pbrt-v4 User's Guide.
- Documentation on the pbrt-v4 Scene Description Format.
pbrt-v4 represents a substantial update to the previous version of pbrt-v3. Major changes include:
- Spectral rendering
- Rendering computations are always performed using point-sampled spectra; the use of RGB color is limited to the scene description (e.g., image texture maps), and final image output.
- Modernized volumetric scattering
- An all-new
VolPathIntegrator
based on the null-scattering path integral formulation of Miller et al. 2019 has been added. - Tighter majorants are used for null-scattering with the
GridDensityMedium
via a separate low-resolution grid of majorants. - Both emissive volumes and volumes with RGB-valued absorption and scattering coefficients are now supported.
- An all-new
- Support for rendering on GPUs is available on systems that have CUDA and OptiX.
- The GPU path provides all of the functionality of the CPU-based
VolPathIntegrator
, including volumetric scattering, subsurface scattering, all of pbrt's cameras, samplers, shapes, lights, materials and BxDFs, etc. - Performance is substantially faster than rendering on the CPU.
- The GPU path provides all of the functionality of the CPU-based
- New BxDFs and Materials
- The provided BxDFs and Materials have been redesigned to be more closely tied to physical scattering processes, along the lines of Mitsuba's materials. (Among other things, the kitchen-sink UberMaterial is now gone.)
- Measured BRDFs are now represented using Dupuy and Jakob's approach.
- Scattering from layered materials is accurately simulated using Monte Carlo random walks (after Guo et al. 2018.)
- A variety of light sampling improvements have been implemented.
- "Many-light" sampling is available via light BVHs (Conty and Kulla 2018).
- Solid angle sampling is used for triangle (Arvo1995) and quadrilateral (Ureña et al. 2013) light sources.
- A single ray is now traced for both indirect lighting and BSDF-sampled direct-lighting.
- Warp product sampling is used for approximate cosine-weighted solid angle sampling (Hart et al. 2019).
- An implementation of Bitterli et al's environment light portal sampling technique is included.
- Rendering can now be performed in absolute physical units with modelling of real cameras as per Langlands & Fascione 2020.
- And also...
- Various improvements have been made to the
Sampler
classes, including better randomization and a new sampler that implements Ahmed and Wonka's blue noise Sobol' sampler. - A new
GBufferFilm
that provides position, normal, albedo, etc., at each pixel is now available. (This is particularly useful for denoising and ML training.) - Path regularization (optionally).
- A bilinear patch primitive has been added (Reshetov 2019).
- Various improvements to ray--shape intersection precision.
- Most of the low-level sampling code has been factored out into stand-alone functions for easier reuse. Also, functions that invert many sampling techniques are provided.
- Unit test coverage has been substantially increased.
- Various improvements have been made to the
We have also made a refactoring pass throughout the entire system, cleaning up various APIs and data types to improve both readability and usability.
Finally, pbrt-v4 can work together with the
tev image viewer to display the image as
it's being rendered. As of recent versions, tev can display images
provided to it via a network socket; by default, it listens to port 14158,
though this can be changed via its --hostname
command-line option. If
you have an instance of tev running, you can run pbrt like:
$ pbrt --display-server localhost:14158 scene.pbrt
In that case, the image will be progressively displayed as it renders.
As before, pbrt uses git submodules for a number of third-party libraries
that it depends on. Therefore, be sure to use the --recursive
flag when
cloning the repository:
$ git clone --recursive https://github.com/mmp/pbrt-v4.git
If you accidentally clone pbrt without using --recursive
(or to update
the pbrt source tree after a new submodule has been added, run the
following command to also fetch the dependencies:
$ git submodule update --init --recursive
pbrt uses cmake for its build system. Note that a
release build is the default; provide -DCMAKE_BUILD_TYPE=Debug
to cmake
for a debug build.
pbrt should build on any system that has C++ compiler with support for C++17; we have verified that it builds on Ubuntu 20.04, MacOS 10.14, and Windows 10. We welcome PRs that fix any issues that prevent it from building on other systems.
Please use the pbrt-v4 github issue tracker to report bugs in pbrt-v4. (We have pre-populated it with a number of issues corresponding to known bugs in the initial release.)
We are always happy to receive pull requests that fix bugs, including bugs you find yourself or fixes for open issues in the issue tracker. We are also happy to hear suggestions about improvements to the implementations of the various algorithms we have implemented.
Note, however, that in the interests of finishing the book in a finite amount of time, the functionality of pbrt-v4 is basically fixed at this point. We therefore will not be accepting PRs that make major changes to the system's operation or structure (but feel free to keep them in your own forks!). Also, don't bother sending PRs for anything marked "TODO" or "FIXME" in the source code; we'll take care of those as we finish polishing things up.
There are a variety of changes to the input file format and, as noted above, the new format is not yet documented. However, pbrt-v4 partially makes up for that by providing an automatic upgrade mechanism:
$ pbrt --upgrade old.pbrt > new.pbrt
Most scene files can be automatically updated. In some cases manual intervention is required; an error message will be printed in this case.
The environment map parameterization has also changed (from equi-rect to an equi-area mapping); you can upgrade environment maps using
$ imgtool makeequiarea old.exr --outfile new.exr
The best option for importing scenes to pbrt is to use assimp, which as of January 21, 2021 includes support for exporting to pbrt-v4's file format:
$ assimp export scene.fbx scene.pbrt
While the converter tries to convert materials to pbrt's material model,
some manual tweaking may be necessary after export. Furthermore, area
light sources are not always successfully detected; manual intervention may
be required for them as well. Use of pbrt's built-in support for
converting meshes to use the binary PLY format is also recommended after
conversion. (pbrt --toply scene.pbrt > newscene.pbrt
).
To run on the GPU, pbrt requires:
- C++17 support on the GPU, including kernel launch with C++ lambdas.
- Unified memory so that the CPU can allocate and initialize data structures for code that runs on the GPU.
- An API for ray-object intersections on the GPU.
These requirements are effectively what makes it possible to bring pbrt to the GPU with limited changes to the core system. As a practical matter, these capabilities are only available via CUDA and OptiX on NVIDIA GPUs today, though we'd be happy to see pbrt running on any other GPUs that provide those capabilities.
pbrt's GPU path currently requires CUDA 11.0 or later and OptiX 7.1 or later. Both Linux and Windows are supported.
The build scripts automatically attempt to find a CUDA compiler, looking in
the usual places; the cmake output will indicate whether it was successful.
It is necessary to manually set the cmake PBRT_OPTIX7_PATH
configuration
option to point at an OptiX installation. By default, the GPU shader model
that pbrt targets is set automatically based on the GPU in the system.
Alternatively, the PBRT_GPU_SHADER_MODEL
option can be set manually
(e.g., -DPBRT_GPU_SHADER_MODEL=sm_80
).
Even when compiled with GPU support, pbrt uses the CPU by default unless
the --gpu
command-line option is given. Note that when rendering with
the GPU, the --spp
command-line flag can be helpful to easily crank up
the number of samples per pixel. Also, it's extra fun to use tev to watch
rendering progress.
The imgtool program that is built as part of pbrt provides support for the OptiX denoiser in the GPU build. The denoiser is capable of operating on RGB-only images, but gives better results with "deep" images that include auxiliary channels like albedo and normal. Setting the scene's "Film" type to be "gbuffer" when rendering and using EXR for the image format causes pbrt to generate such a "deep" image. In either case, using the denoiser is straightforward:
$ imgtool denoise-optix noisy.exr --outfile denoised.exr