test_that("Suggested samples have low confidence, high entropy", { # Get uncertaintly cube. data_dir <- system.file("extdata/raster/mod13q1", package = "sits") cube <- sits_cube( source = "BDC", collection = "MOD13Q1-6", data_dir = data_dir, progress = FALSE ) set.seed(123) rfor_model <- sits_train(samples_modis_ndvi, ml_method = sits_xgboost(verbose = FALSE) ) output_dir <- paste0(tempdir(), "/al") if (!dir.exists(output_dir)) { dir.create(output_dir) } probs_cube <- sits_classify( cube, ml_model = rfor_model, output_dir = output_dir, memsize = 4, multicores = 2, progress = FALSE ) uncert_cube <- sits_uncertainty( probs_cube, type = "least", output_dir = output_dir ) # Get sample suggestions. samples_df <- suppressWarnings(sits_uncertainty_sampling( uncert_cube, min_uncert = 0.3, n = 100, sampling_window = 10 )) expect_true(nrow(samples_df) <= 100) expect_true(all(colnames(samples_df) %in% c( "longitude", "latitude", "start_date", "end_date", "label", "uncertainty" ))) expect_true(all(samples_df[["label"]] == "NoClass")) expect_true(all(samples_df[["uncertainty"]] >= 0.3)) unlink(probs_cube$file_info[[1]]$path) unlink(uncert_cube$file_info[[1]]$path) }) test_that("Increased samples have high confidence, low entropy", { # Get uncertaintly cube. data_dir <- system.file("extdata/raster/mod13q1", package = "sits") out_dir <- tempdir() cube <- sits_cube( source = "BDC", collection = "MOD13Q1-6", data_dir = data_dir, progress = FALSE ) rfor_model <- sits_train(samples_modis_ndvi, ml_method = sits_rfor() ) output_dir <- paste0(tempdir(), "/al_2") if (!dir.exists(output_dir)) { dir.create(output_dir) } probs_cube <- sits_classify( cube, ml_model = rfor_model, output_dir = output_dir, memsize = 4, multicores = 2, progress = FALSE ) # Get sample suggestions based on high confidence samples_df <- suppressWarnings( sits_confidence_sampling( probs_cube = probs_cube, n = 20, min_margin = 0.5, sampling_window = 10 ) ) expect_warning( sits_confidence_sampling( probs_cube = probs_cube, n = 60, min_margin = 0.5, sampling_window = 10 ) ) labels <- sits_labels(probs_cube) samples_count <- dplyr::count(samples_df, .data[["label"]]) expect_true( nrow(dplyr::filter(samples_count, .data[["n"]] <= 20)) == 4 ) expect_true(all(colnames(samples_df) %in% c( "longitude", "latitude", "start_date", "end_date", "label", "confidence" ))) unlink(probs_cube$file_info[[1]]$path) })