fixed SURF_GPU bug (features count > max dimension of grid)
minor gpu docs fixes
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@ -150,7 +150,7 @@ The class for computing stereo correspondence using belief propagation algorithm
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...
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};
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The class implements Pedro F. Felzenszwalb algorithm [Pedro F. Felzenszwalb and Daniel P. Huttenlocher. Efficient belief propagation for early vision. International Journal of Computer Vision, 70(1), October 2006.]. It can compute own data cost (using truncated linear model) or use user-provided data cost.
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The class implements Pedro F. Felzenszwalb algorithm [Pedro F. Felzenszwalb and Daniel P. Huttenlocher. Efficient belief propagation for early vision. International Journal of Computer Vision, 70(1), October 2006]. It can compute own data cost (using truncated linear model) or use user-provided data cost.
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**Please note:** ``StereoBeliefPropagation`` requires a lot of memory:
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@ -162,7 +162,7 @@ for message storage and
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.. math::
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width\_step \cdot height \cdot ndisp \cdot (1 + 0.25 + 0.0625 + \dotsm + \frac{1}{4^{levels}}
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width\_step \cdot height \cdot ndisp \cdot (1 + 0.25 + 0.0625 + \dotsm + \frac{1}{4^{levels}})
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for data cost storage. ``width_step`` is the number of bytes in a line including the padding.
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@ -204,7 +204,7 @@ gpu::StereoBeliefPropagation::StereoBeliefPropagation
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DiscTerm = \min(disc\_single\_jump \cdot \lvert f_1-f_2 \rvert, max\_disc\_term)
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For more details please see [Pedro F. Felzenszwalb and Daniel P. Huttenlocher. Efficient belief propagation for early vision. International Journal of Computer Vision, 70(1), October 2006.].
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For more details please see [Pedro F. Felzenszwalb and Daniel P. Huttenlocher. Efficient belief propagation for early vision. International Journal of Computer Vision, 70(1), October 2006].
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By default :cpp:class:`StereoBeliefPropagation` uses floating-point arithmetics and ``CV_32FC1`` type for messages. But also it can use fixed-point arithmetics and ``CV_16SC1`` type for messages for better perfomance. To avoid overflow in this case, the parameters must satisfy
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@ -294,7 +294,7 @@ gpu::Stream::waitForCompletion
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gpu::StreamAccessor
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-------------------
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.. c:type:: gpu::StreamAccessor
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.. cpp:class:: gpu::StreamAccessor
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This class provides possibility to get ``cudaStream_t`` from :cpp:class:`gpu::Stream`. This class is declared in ``stream_accessor.hpp`` because that is only public header that depend on Cuda Runtime API. Including it will bring the dependency to your code. ::
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@ -163,7 +163,7 @@ gpu::cornerMinEigenVal
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:param borderType: Pixel extrapolation method. Only ``BORDER_REFLECT101`` and ``BORDER_REPLICATE`` are supported for now.
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See also: :c:func:`cornerMinEigenValue`.
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See also: :c:func:`cornerMinEigenVal`.
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@ -279,7 +279,7 @@ gpu::convolve
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gpu::ConvolveBuf
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----------------
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.. c:type:: gpu::ConvolveBuf
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.. cpp:class:: gpu::ConvolveBuf
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Memory buffer for the :cpp:func:`gpu::convolve` function. ::
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@ -185,7 +185,7 @@ gpu::DeviceInfo::isCompatible
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gpu::TargetArchs
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----------------
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.. c:type:: gpu::TargetArchs
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.. cpp:class:: gpu::TargetArchs
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This class provides functionality (as set of static methods) for checking which NVIDIA card architectures the GPU module was built for.
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@ -223,7 +223,7 @@ According to the CUDA C Programming Guide Version 3.2: "PTX code produced for so
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gpu::MultiGpuManager
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--------------------
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.. c:type:: gpu::MultiGpuManager
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.. cpp:class:: gpu::MultiGpuManager
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Provides functionality for working with many GPUs. ::
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@ -1576,7 +1576,7 @@ namespace cv
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void operator()(const GpuMat& img, const GpuMat& mask, std::vector<KeyPoint>& keypoints, std::vector<float>& descriptors,
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bool useProvidedKeypoints = false);
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//! max keypoints = keypointsRatio * img.size().area()
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//! max keypoints = min(keypointsRatio * img.size().area(), 65535)
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float keypointsRatio;
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bool upright;
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@ -101,9 +101,9 @@ namespace
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CV_Assert(nOctaves > 0 && nOctaveLayers > 0);
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CV_Assert(TargetArchs::builtWith(GLOBAL_ATOMICS) && DeviceInfo().supports(GLOBAL_ATOMICS));
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maxKeypoints = static_cast<int>(img.size().area() * surf.keypointsRatio);
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maxFeatures = static_cast<int>(1.5 * maxKeypoints);
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maxCandidates = static_cast<int>(1.5 * maxFeatures);
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maxKeypoints = min(static_cast<int>(img.size().area() * surf.keypointsRatio), 65535);
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maxFeatures = min(static_cast<int>(1.5 * maxKeypoints), 65535);
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maxCandidates = min(static_cast<int>(1.5 * maxFeatures), 65535);
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CV_Assert(maxKeypoints > 0);
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