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170 lines
7.3 KiB
170 lines
7.3 KiB
# Kernel API {#gapi_kernel_api} |
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[TOC] |
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# G-API Kernel API |
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The core idea behind G-API is portability -- a pipeline built with |
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G-API must be portable (or at least able to be portable). It means |
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that either it works out-of-the box when compiled for new platform, |
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_or_ G-API provides necessary tools to make it running there, with |
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little-to-no changes in the algorithm itself. |
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This idea can be achieved by separating kernel interface from its |
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implementation. Once a pipeline is built using kernel interfaces, it |
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becomes implementation-neutral -- the implementation details |
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(i.e. which kernels to use) are passed on a separate stage (graph |
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compilation). |
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Kernel-implementation hierarchy may look like: |
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![Kernel API/implementation hierarchy example](pics/kernel_hierarchy.png) |
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A pipeline itself then can be expressed only in terms of `A`, `B`, and |
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so on, and choosing which implementation to use in execution becomes |
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an external parameter. |
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# Defining a kernel {#gapi_defining_kernel} |
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G-API provides a macro to define a new kernel interface -- |
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G_TYPED_KERNEL(): |
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@snippet modules/gapi/samples/kernel_api_snippets.cpp filter2d_api |
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This macro is a shortcut to a new type definition. It takes three |
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arguments to register a new type, and requires type body to be present |
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(see [below](@ref gapi_kernel_supp_info)). The macro arguments are: |
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1. Kernel interface name -- also serves as a name of new type defined |
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with this macro; |
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2. Kernel signature -- an `std::function<>`-like signature which defines |
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API of the kernel; |
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3. Kernel's unique name -- used to identify kernel when its type |
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informattion is stripped within the system. |
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Kernel declaration may be seen as function declaration -- in both cases |
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a new entity must be used then according to the way it was defined. |
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Kernel signature defines kernel's usage syntax -- which parameters |
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it takes during graph construction. Implementations can also use this |
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signature to derive it into backend-specific callback signatures (see |
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next chapter). |
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Kernel may accept values of any type, and G-API _dynamic_ types are |
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handled in a special way. All other types are opaque to G-API and |
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passed to kernel in `outMeta()` or in execution callbacks as-is. |
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Kernel's return value can _only_ be of G-API dynamic type -- cv::GMat, |
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cv::GScalar, or cv::GArray<T>. If an operation has more than one output, |
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it should be wrapped into an `std::tuple<>` (which can contain only |
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mentioned G-API types). Arbitrary-output-number operations are not |
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supported. |
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Once a kernel is defined, it can be used in pipelines with special, |
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G-API-supplied method "::on()". This method has the same signature as |
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defined in kernel, so this code: |
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@snippet modules/gapi/samples/kernel_api_snippets.cpp filter2d_on |
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is a perfectly legal construction. This example has some verbosity, |
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though, so usually a kernel declaration comes with a C++ function |
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wrapper ("factory method") which enables optional parameters, more |
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compact syntax, Doxygen comments, etc: |
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@snippet modules/gapi/samples/kernel_api_snippets.cpp filter2d_wrap |
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so now it can be used like: |
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@snippet modules/gapi/samples/kernel_api_snippets.cpp filter2d_wrap_call |
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# Extra information {#gapi_kernel_supp_info} |
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In the current version, kernel declaration body (everything within the |
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curly braces) must contain a static function `outMeta()`. This function |
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establishes a functional dependency between operation's input and |
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output metadata. |
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_Metadata_ is an information about data kernel operates on. Since |
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non-G-API types are opaque to G-API, G-API cares only about `G*` data |
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descriptors (i.e. dimensions and format of cv::GMat, etc). |
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`outMeta()` is also an example of how kernel's signature can be |
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transformed into a derived callback -- note that in this example, |
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`outMeta()` signature exactly follows the kernel signature (defined |
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within the macro) but is different -- where kernel expects cv::GMat, |
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`outMeta()` takes and returns cv::GMatDesc (a G-API structure metadata |
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for cv::GMat). |
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The point of `outMeta()` is to propagate metadata information within |
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computation from inputs to outputs and infer metadata of internal |
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(intermediate, temporary) data objects. This information is required |
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for further pipeline optimizations, memory allocation, and other |
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operations done by G-API framework during graph compilation. |
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<!-- TODO add examples --> |
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# Implementing a kernel {#gapi_kernel_implementing} |
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Once a kernel is declared, its interface can be used to implement |
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versions of this kernel in different backends. This concept is |
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naturally projected from object-oriented programming |
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"Interface/Implementation" idiom: an interface can be implemented |
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multiple times, and different implementations of a kernel should be |
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substitutable with each other without breaking the algorithm |
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(pipeline) logic (Liskov Substitution Principle). |
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Every backend defines its own way to implement a kernel interface. |
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This way is regular, though -- whatever plugin is, its kernel |
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implementation must be "derived" from a kernel interface type. |
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Kernel implementation are then organized into _kernel |
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packages_. Kernel packages are passed to cv::GComputation::compile() |
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as compile arguments, with some hints to G-API on how to select proper |
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kernels (see more on this in "Heterogeneity"[TBD]). |
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For example, the aforementioned `Filter2D` is implemented in |
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"reference" CPU (OpenCV) plugin this way (*NOTE* -- this is a |
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simplified form with improper border handling): |
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@snippet modules/gapi/samples/kernel_api_snippets.cpp filter2d_ocv |
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Note how CPU (OpenCV) plugin has transformed the original kernel |
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signature: |
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- Input cv::GMat has been substituted with cv::Mat, holding actual input |
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data for the underlying OpenCV function call; |
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- Output cv::GMat has been transformed into extra output parameter, thus |
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`GCPUFilter2D::run()` takes one argument more than the original |
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kernel signature. |
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The basic intuition for kernel developer here is _not to care_ where |
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that cv::Mat objects come from instead of the original cv::GMat -- and |
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just follow the signature conventions defined by the plugin. G-API |
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will call this method during execution and supply all the necessary |
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information (and forward the original opaque data as-is). |
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# Compound kernels |
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Sometimes kernel is a single thing only on API level. It is convenient |
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for users, but on a particular implementation side it would be better to |
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have multiple kernels (a subgraph) doing the thing instead. An example |
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is goodFeaturesToTrack() -- while in OpenCV backend it may remain a |
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single kernel, with Fluid it becomes compound -- Fluid can handle Harris |
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response calculation but can't do sparse non-maxima suppression and |
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point extraction to an STL vector: |
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<!-- PIC --> |
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A compound kernel _implementation_ can be defined using a generic |
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macro GAPI_COMPOUND_KERNEL(): |
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@snippet modules/gapi/samples/kernel_api_snippets.cpp compound |
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<!-- TODO: ADD on how Compound kernels may simplify dispatching --> |
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<!-- TODO: Add details on when expand() is called! --> |
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It is important to distinguish a compound kernel from G-API high-order |
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function, i.e. a C++ function which looks like a kernel but in fact |
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generates a subgraph. The core difference is that a compound kernel is |
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an _implementation detail_ and a kernel implementation may be either |
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compound or not (depending on backend capabilities), while a |
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high-order function is a "macro" in terms of G-API and so cannot act as |
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an interface which then needs to be implemented by a backend.
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