R/RcppExports.R

Defines functions C_least_probs C_margin_probs C_entropy_probs smooth_whit_mtx smooth_whit smooth_sg_mtx smooth_sg bayes_smoother_fraction bayes_var C_max_sampling C_temp_iqr C_temp_tqr C_temp_fqr C_temp_mse C_temp_amd C_temp_abs_sum C_temp_fslope C_temp_amplitude C_temp_kurt C_temp_skew C_temp_std C_temp_sum C_temp_median C_temp_mean C_temp_min C_temp_max C_normalize_data_0 C_normalize_data C_nnls_solver_batch batch_calc C_fill_na C_mask_na linear_interp_vec linear_interp C_label_max_prob RcppParallelBatchSupersom RcppBatchSupersom RcppSupersom RcppMap kohonen_object_distances kohonen_euclidean kohonen_dtw C_kernel_modal C_kernel_var C_kernel_max C_kernel_min C_kernel_sd C_kernel_mean C_kernel_median weighted_uncert_probs weighted_probs

# Generated by using Rcpp::compileAttributes() -> do not edit by hand
# Generator token: 10BE3573-1514-4C36-9D1C-5A225CD40393

weighted_probs <- function(data_lst, weights) {
    .Call(`_sits_weighted_probs`, data_lst, weights)
}

weighted_uncert_probs <- function(data_lst, unc_lst) {
    .Call(`_sits_weighted_uncert_probs`, data_lst, unc_lst)
}

C_kernel_median <- function(x, ncols, nrows, band, window_size) {
    .Call(`_sits_C_kernel_median`, x, ncols, nrows, band, window_size)
}

C_kernel_mean <- function(x, ncols, nrows, band, window_size) {
    .Call(`_sits_C_kernel_mean`, x, ncols, nrows, band, window_size)
}

C_kernel_sd <- function(x, ncols, nrows, band, window_size) {
    .Call(`_sits_C_kernel_sd`, x, ncols, nrows, band, window_size)
}

C_kernel_min <- function(x, ncols, nrows, band, window_size) {
    .Call(`_sits_C_kernel_min`, x, ncols, nrows, band, window_size)
}

C_kernel_max <- function(x, ncols, nrows, band, window_size) {
    .Call(`_sits_C_kernel_max`, x, ncols, nrows, band, window_size)
}

C_kernel_var <- function(x, ncols, nrows, band, window_size) {
    .Call(`_sits_C_kernel_var`, x, ncols, nrows, band, window_size)
}

C_kernel_modal <- function(x, ncols, nrows, band, window_size) {
    .Call(`_sits_C_kernel_modal`, x, ncols, nrows, band, window_size)
}

kohonen_dtw <- function() {
    .Call(`_sits_kohonen_dtw`)
}

kohonen_euclidean <- function() {
    .Call(`_sits_kohonen_euclidean`)
}

kohonen_object_distances <- function(data, numVars, numNAs, distanceFunction, weights) {
    .Call(`_sits_kohonen_object_distances`, data, numVars, numNAs, distanceFunction, weights)
}

RcppMap <- function(data, numVars, numNAs, codes, weights, distanceFunction) {
    .Call(`_sits_RcppMap`, data, numVars, numNAs, codes, weights, distanceFunction)
}

RcppSupersom <- function(data, codes, numVars, weights, distanceFunction, numNAs, neighbourhoodDistances, alphas, radii, numEpochs) {
    .Call(`_sits_RcppSupersom`, data, codes, numVars, weights, distanceFunction, numNAs, neighbourhoodDistances, alphas, radii, numEpochs)
}

RcppBatchSupersom <- function(data, codes, numVars, weights, distanceFunction, numNAs, neighbourhoodDistances, radii, numEpochs) {
    .Call(`_sits_RcppBatchSupersom`, data, codes, numVars, weights, distanceFunction, numNAs, neighbourhoodDistances, radii, numEpochs)
}

RcppParallelBatchSupersom <- function(data, codes, numVars, weights, distanceFunction, numNAs, neighbourhoodDistances, radii, numEpochs, numCores) {
    .Call(`_sits_RcppParallelBatchSupersom`, data, codes, numVars, weights, distanceFunction, numNAs, neighbourhoodDistances, radii, numEpochs, numCores)
}

C_label_max_prob <- function(x) {
    .Call(`_sits_C_label_max_prob`, x)
}

linear_interp <- function(mtx) {
    .Call(`_sits_linear_interp`, mtx)
}

linear_interp_vec <- function(vec) {
    .Call(`_sits_linear_interp_vec`, vec)
}

C_mask_na <- function(x) {
    .Call(`_sits_C_mask_na`, x)
}

C_fill_na <- function(x, fill) {
    .Call(`_sits_C_fill_na`, x, fill)
}

batch_calc <- function(n_pixels, max_lines_per_batch) {
    .Call(`_sits_batch_calc`, n_pixels, max_lines_per_batch)
}

C_nnls_solver_batch <- function(x, em, rmse, max_it = 400L, tol = 0.000001) {
    .Call(`_sits_C_nnls_solver_batch`, x, em, rmse, max_it, tol)
}

C_normalize_data <- function(data, min, max) {
    .Call(`_sits_C_normalize_data`, data, min, max)
}

C_normalize_data_0 <- function(data, min, max) {
    .Call(`_sits_C_normalize_data_0`, data, min, max)
}

C_temp_max <- function(mtx) {
    .Call(`_sits_C_temp_max`, mtx)
}

C_temp_min <- function(mtx) {
    .Call(`_sits_C_temp_min`, mtx)
}

C_temp_mean <- function(mtx) {
    .Call(`_sits_C_temp_mean`, mtx)
}

C_temp_median <- function(mtx) {
    .Call(`_sits_C_temp_median`, mtx)
}

C_temp_sum <- function(mtx) {
    .Call(`_sits_C_temp_sum`, mtx)
}

C_temp_std <- function(mtx) {
    .Call(`_sits_C_temp_std`, mtx)
}

C_temp_skew <- function(mtx) {
    .Call(`_sits_C_temp_skew`, mtx)
}

C_temp_kurt <- function(mtx) {
    .Call(`_sits_C_temp_kurt`, mtx)
}

C_temp_amplitude <- function(mtx) {
    .Call(`_sits_C_temp_amplitude`, mtx)
}

C_temp_fslope <- function(mtx) {
    .Call(`_sits_C_temp_fslope`, mtx)
}

C_temp_abs_sum <- function(mtx) {
    .Call(`_sits_C_temp_abs_sum`, mtx)
}

C_temp_amd <- function(mtx) {
    .Call(`_sits_C_temp_amd`, mtx)
}

C_temp_mse <- function(mtx) {
    .Call(`_sits_C_temp_mse`, mtx)
}

C_temp_fqr <- function(mtx) {
    .Call(`_sits_C_temp_fqr`, mtx)
}

C_temp_tqr <- function(mtx) {
    .Call(`_sits_C_temp_tqr`, mtx)
}

C_temp_iqr <- function(mtx) {
    .Call(`_sits_C_temp_iqr`, mtx)
}

C_max_sampling <- function(x, nrows, ncols, window_size) {
    .Call(`_sits_C_max_sampling`, x, nrows, ncols, window_size)
}

bayes_var <- function(m, m_nrow, m_ncol, w, neigh_fraction) {
    .Call(`_sits_bayes_var`, m, m_nrow, m_ncol, w, neigh_fraction)
}

bayes_smoother_fraction <- function(logits, nrows, ncols, window_size, smoothness, neigh_fraction) {
    .Call(`_sits_bayes_smoother_fraction`, logits, nrows, ncols, window_size, smoothness, neigh_fraction)
}

smooth_sg <- function(data, f_res, p, n) {
    .Call(`_sits_smooth_sg`, data, f_res, p, n)
}

smooth_sg_mtx <- function(data, f_res, p, n) {
    .Call(`_sits_smooth_sg_mtx`, data, f_res, p, n)
}

smooth_whit <- function(data, lambda, length) {
    .Call(`_sits_smooth_whit`, data, lambda, length)
}

smooth_whit_mtx <- function(data, lambda, length) {
    .Call(`_sits_smooth_whit_mtx`, data, lambda, length)
}

C_entropy_probs <- function(x) {
    .Call(`_sits_C_entropy_probs`, x)
}

C_margin_probs <- function(x) {
    .Call(`_sits_C_margin_probs`, x)
}

C_least_probs <- function(x) {
    .Call(`_sits_C_least_probs`, x)
}

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sits documentation built on May 29, 2024, 5:55 a.m.