LSSTApplications
16.0-10-g0ee56ad+5,16.0-11-ga33d1f2+5,16.0-12-g3ef5c14+3,16.0-12-g71e5ef5+18,16.0-12-gbdf3636+3,16.0-13-g118c103+3,16.0-13-g8f68b0a+3,16.0-15-gbf5c1cb+4,16.0-16-gfd17674+3,16.0-17-g7c01f5c+3,16.0-18-g0a50484+1,16.0-20-ga20f992+8,16.0-21-g0e05fd4+6,16.0-21-g15e2d33+4,16.0-22-g62d8060+4,16.0-22-g847a80f+4,16.0-25-gf00d9b8+1,16.0-28-g3990c221+4,16.0-3-gf928089+3,16.0-32-g88a4f23+5,16.0-34-gd7987ad+3,16.0-37-gc7333cb+2,16.0-4-g10fc685+2,16.0-4-g18f3627+26,16.0-4-g5f3a788+26,16.0-5-gaf5c3d7+4,16.0-5-gcc1f4bb+1,16.0-6-g3b92700+4,16.0-6-g4412fcd+3,16.0-6-g7235603+4,16.0-69-g2562ce1b+2,16.0-8-g14ebd58+4,16.0-8-g2df868b+1,16.0-8-g4cec79c+6,16.0-8-gadf6c7a+1,16.0-8-gfc7ad86,16.0-82-g59ec2a54a+1,16.0-9-g5400cdc+2,16.0-9-ge6233d7+5,master-g2880f2d8cf+3,v17.0.rc1
LSSTDataManagementBasePackage
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Namespaces | |
cmodel | |
common | |
detail | |
display | |
optimizer | |
pixelFitRegion | |
priors | |
psf | |
version | |
Classes | |
class | AdaptiveImportanceSampler |
Sampler class that performs Monte Carlo sampling, while iteratively updating the analytic distribution from which points are drawn. More... | |
class | CModelAlgorithm |
Main public interface class for CModel algorithm. More... | |
struct | CModelControl |
The main control object for CModel, containing parameters for the final linear fit and aggregating the other control objects. More... | |
struct | CModelResult |
Master result object for CModel, containing results for the final linear fit and three nested CModelStageResult objects for the results of the previous stages. More... | |
struct | CModelStageControl |
Nested control object for CModel that configures one of the three ("initial", "exp", "dev") nonlinear fitting stages. More... | |
struct | CModelStageResult |
Result object for a single nonlinear fitting stage of the CModel algorithm. More... | |
class | DoubleShapeletPsfApproxAlgorithm |
An algorithm that fits a 2-component shapelet approximation to the PSF model. More... | |
class | DoubleShapeletPsfApproxControl |
Control object used to configure a 2-shapelet fit to a PSF model; see DoubleShapeletPsfApproxAlgorithm. More... | |
class | EpochFootprint |
An image at one epoch of a galaxy, plus associated info. More... | |
class | GeneralPsfFitter |
Class for fitting multishapelet models to PSF images. More... | |
class | GeneralPsfFitterAlgorithm |
class | GeneralPsfFitterComponentControl |
Control object used to define one piece of multishapelet fit to a PSF model; see GeneralPsfFitterControl. More... | |
class | GeneralPsfFitterControl |
Control object used to configure a multishapelet fit to a PSF model; see GeneralPsfFitter. More... | |
class | ImportanceSamplerControl |
Control object for one iteration of adaptive importance sampling. More... | |
class | Likelihood |
Base class for optimizer/sampler likelihood functions that compute likelihood at a point. More... | |
struct | LocalUnitTransform |
A local mapping between two UnitSystems. More... | |
class | Mixture |
class | MixtureComponent |
A weighted Student's T or Gaussian distribution used as a component in a Mixture. More... | |
class | MixturePrior |
A prior that's flat in amplitude parameters, and uses a Mixture for nonlinear parameters. More... | |
class | MixtureUpdateRestriction |
Helper class used to define restrictions to the form of the component parameters in Mixture::updateEM. More... | |
class | Model |
Abstract base class and concrete factories that define multi-shapelet galaxy models. More... | |
class | MultiModel |
A concrete Model class that simply concatenates several other Models. More... | |
class | MultiShapeletPsfLikelihood |
Likelihood object used to fit multishapelet models to PSF model images; mostly for internal use by GeneralPsfFitter. More... | |
class | Optimizer |
A numerical optimizer customized for least-squares problems with Bayesian priors. More... | |
class | OptimizerControl |
Configuration object for Optimizer. More... | |
class | OptimizerHistoryRecorder |
class | OptimizerObjective |
Base class for objective functions for Optimizer. More... | |
class | PixelFitRegion |
struct | PixelFitRegionControl |
class | Prior |
Base class for Bayesian priors. More... | |
class | Sampler |
class | SamplingObjective |
class | SemiEmpiricalPrior |
A piecewise prior motivated by both real distributions and practical considerations. More... | |
struct | SemiEmpiricalPriorControl |
class | SoftenedLinearPrior |
A prior that's linear in radius and flat in ellipticity, with a cubic roll-off at the edges. More... | |
struct | SoftenedLinearPriorControl |
class | TruncatedGaussian |
Represents a multidimensional Gaussian function truncated at zero. More... | |
class | TruncatedGaussianEvaluator |
Helper class for evaluating the -log of a TruncatedGaussian. More... | |
class | TruncatedGaussianLogEvaluator |
Helper class for evaluating the -log of a TruncatedGaussian. More... | |
class | TruncatedGaussianSampler |
Helper class for drawing samples from a TruncatedGaussian. More... | |
struct | UnitSystem |
A simple struct that combines a Wcs and a Calib. More... | |
class | UnitTransformedLikelihood |
A concrete Likelihood class that does not require its parameters and data to be in the same UnitSystem. More... | |
class | UnitTransformedLikelihoodControl |
Control object used to initialize a UnitTransformedLikelihood. More... | |
Typedefs | |
typedef std::vector< boost::shared_ptr< Model > > | ModelVector |
typedef float | Pixel |
Typedefs to be used for pixel values. More... | |
typedef double | Scalar |
Typedefs to be used for probability and parameter values. More... | |
typedef Eigen::Matrix< Scalar, Eigen::Dynamic, Eigen::Dynamic > | Matrix |
Typedefs to be used for probability and parameter values. More... | |
typedef Eigen::Matrix< Scalar, Eigen::Dynamic, 1 > | Vector |
Typedefs to be used for probability and parameter values. More... | |
typedef afw::table::Key< Scalar > | ScalarKey |
Typedefs to be used for probability and parameter values. More... | |
typedef afw::table::Key< afw::table::Array< Scalar > > | ArrayKey |
Typedefs to be used for probability and parameter values. More... | |
Functions | |
void | solveTrustRegion (ndarray::Array< Scalar, 1, 1 > const &x, ndarray::Array< Scalar const, 2, 1 > const &F, ndarray::Array< Scalar const, 1, 1 > const &g, double r, double tolerance) |
Solve a symmetric quadratic matrix equation with a ball constraint. More... | |
typedef Eigen::Matrix<Scalar,Eigen::Dynamic,Eigen::Dynamic> lsst::meas::modelfit::Matrix |
typedef std::vector<boost::shared_ptr< Model > > lsst::meas::modelfit::ModelVector |
typedef float lsst::meas::modelfit::Pixel |
Typedefs to be used for pixel values.
typedef double lsst::meas::modelfit::Scalar |
typedef Eigen::Matrix<Scalar,Eigen::Dynamic,1> lsst::meas::modelfit::Vector |
void lsst::meas::modelfit::solveTrustRegion | ( | ndarray::Array< Scalar, 1, 1 > const & | x, |
ndarray::Array< Scalar const, 2, 1 > const & | F, | ||
ndarray::Array< Scalar const, 1, 1 > const & | g, | ||
double | r, | ||
double | tolerance | ||
) |
Solve a symmetric quadratic matrix equation with a ball constraint.
This computes a near-exact solution to the "trust region subproblem" necessary in trust-region-based nonlinear optimizers:
\[ \min_x{\quad g^T x + \frac{1}{2}x^T F x}\quad\quad\quad \text{s.t.} ||x|| \le r \]
The tolerance parameter sets how close to \(r\) we require the norm of the solution to be when it lies on the constraint, as a fraction of \(r\) itself.
This implementation is based on the algorithm described in Section 4.3 of "Nonlinear Optimization" by Nocedal and Wright.