# Copyright 2025 The HuggingFace Team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import inspect import unittest from functools import cached_property, reduce from datasets import load_dataset from transformers.models.efficientloftr import EfficientLoFTRConfig, EfficientLoFTRModel from transformers.testing_utils import ( require_torch, require_vision, set_config_for_less_flaky_test, set_model_for_less_flaky_test, slow, torch_device, ) from transformers.utils import is_torch_available, is_vision_available from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, floats_tensor if is_torch_available(): import torch from transformers import EfficientLoFTRForKeypointMatching if is_vision_available(): from transformers import AutoImageProcessor class EfficientLoFTRModelTester: def __init__( self, parent, batch_size=2, image_width=6, # need to be a multiple of `stage_stride[0] * stage_stride[1]` image_height=4, # need to be a multiple of `stage_stride[0] * stage_stride[1]` stage_num_blocks: list[int] = [1, 1], out_features: list[int] = [16, 16], # need to be >= 2 to make `config.fine_fusion_dims > 0` stage_stride: list[int] = [2, 1], q_aggregation_kernel_size: int = 1, kv_aggregation_kernel_size: int = 1, q_aggregation_stride: int = 1, kv_aggregation_stride: int = 1, num_attention_layers: int = 2, num_attention_heads: int = 8, hidden_size: int = 16, coarse_matching_threshold: float = 0.0, fine_kernel_size: int = 2, coarse_matching_border_removal: int = 0, ): self.parent = parent self.batch_size = batch_size self.image_width = image_width self.image_height = image_height self.stage_num_blocks = stage_num_blocks self.out_features = out_features self.stage_stride = stage_stride self.q_aggregation_kernel_size = q_aggregation_kernel_size self.kv_aggregation_kernel_size = kv_aggregation_kernel_size self.q_aggregation_stride = q_aggregation_stride self.kv_aggregation_stride = kv_aggregation_stride self.num_attention_layers = num_attention_layers self.num_attention_heads = num_attention_heads self.hidden_size = hidden_size self.coarse_matching_threshold = coarse_matching_threshold self.coarse_matching_border_removal = coarse_matching_border_removal self.fine_kernel_size = fine_kernel_size def prepare_config_and_inputs(self): # EfficientLoFTR expects a grayscale image as input pixel_values = floats_tensor([self.batch_size, 2, 3, self.image_height, self.image_width]) config = self.get_config() return config, pixel_values def get_config(self): return EfficientLoFTRConfig( stage_num_blocks=self.stage_num_blocks, out_features=self.out_features, stage_stride=self.stage_stride, q_aggregation_kernel_size=self.q_aggregation_kernel_size, kv_aggregation_kernel_size=self.kv_aggregation_kernel_size, q_aggregation_stride=self.q_aggregation_stride, kv_aggregation_stride=self.kv_aggregation_stride, num_attention_layers=self.num_attention_layers, num_attention_heads=self.num_attention_heads, hidden_size=self.hidden_size, coarse_matching_threshold=self.coarse_matching_threshold, coarse_matching_border_removal=self.coarse_matching_border_removal, fine_kernel_size=self.fine_kernel_size, ) def create_and_check_model(self, config, pixel_values): model = EfficientLoFTRForKeypointMatching(config=config) model.to(torch_device) model.eval() result = model(pixel_values) maximum_num_matches = result.matches.shape[-1] self.parent.assertEqual( result.keypoints.shape, (self.batch_size, 2, maximum_num_matches, 2), ) self.parent.assertEqual( result.matches.shape, (self.batch_size, 2, maximum_num_matches), ) self.parent.assertEqual( result.matching_scores.shape, (self.batch_size, 2, maximum_num_matches), ) def prepare_config_and_inputs_for_common(self): config_and_inputs = self.prepare_config_and_inputs() config, pixel_values = config_and_inputs inputs_dict = {"pixel_values": pixel_values} return config, inputs_dict @require_torch class EfficientLoFTRModelTest(ModelTesterMixin, unittest.TestCase): all_model_classes = (EfficientLoFTRForKeypointMatching, EfficientLoFTRModel) if is_torch_available() else () test_pruning = False test_resize_embeddings = False test_head_masking = False has_attentions = True def setUp(self): self.model_tester = EfficientLoFTRModelTester(self) self.config_tester = ConfigTester(self, config_class=EfficientLoFTRConfig, has_text_modality=False) def test_config(self): self.config_tester.create_and_test_config_to_json_string() self.config_tester.create_and_test_config_to_json_file() self.config_tester.create_and_test_config_from_and_save_pretrained() self.config_tester.create_and_test_config_with_num_labels() self.config_tester.check_config_can_be_init_without_params() self.config_tester.check_config_arguments_init() @unittest.skip(reason="EfficientLoFTRForKeypointMatching does not use inputs_embeds") def test_inputs_embeds(self): pass @unittest.skip(reason="EfficientLoFTRForKeypointMatching does not support input and output embeddings") def test_model_get_set_embeddings(self): pass @unittest.skip(reason="EfficientLoFTRForKeypointMatching does not use feedforward chunking") def test_feed_forward_chunking(self): pass @unittest.skip(reason="EfficientLoFTRForKeypointMatching is not trainable") def test_training(self): pass @unittest.skip(reason="EfficientLoFTRForKeypointMatching is not trainable") def test_training_gradient_checkpointing(self): pass @unittest.skip(reason="EfficientLoFTRForKeypointMatching is not trainable") def test_training_gradient_checkpointing_use_reentrant(self): pass @unittest.skip(reason="EfficientLoFTRForKeypointMatching is not trainable") def test_training_gradient_checkpointing_use_reentrant_false(self): pass @unittest.skip(reason="EfficientLoFTR does not output any loss term in the forward pass") def test_retain_grad_hidden_states_attentions(self): pass def test_model(self): config_and_inputs = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*config_and_inputs) def test_forward_signature(self): config, _ = self.model_tester.prepare_config_and_inputs() for model_class in self.all_model_classes: model = model_class(config) signature = inspect.signature(model.forward) # signature.parameters is an OrderedDict => so arg_names order is deterministic arg_names = [*signature.parameters.keys()] expected_arg_names = ["pixel_values"] self.assertListEqual(arg_names[:1], expected_arg_names) def test_hidden_states_output(self): def check_hidden_states_output(inputs_dict, config, model_class): model = model_class(config) model.to(torch_device) model.eval() with torch.no_grad(): outputs = model(**self._prepare_for_class(inputs_dict, model_class)) hidden_states = outputs.hidden_states expected_num_hidden_states = len(self.model_tester.stage_num_blocks) + 1 self.assertEqual(len(hidden_states), expected_num_hidden_states) self.assertListEqual( list(hidden_states[0].shape[-2:]), [self.model_tester.image_height, self.model_tester.image_width], ) config, inputs_dict = self.model_tester.prepare_config_and_inputs_for_common() for model_class in self.all_model_classes: inputs_dict["output_hidden_states"] = True check_hidden_states_output(inputs_dict, config, model_class) # check that output_hidden_states also work using config del inputs_dict["output_hidden_states"] config.output_hidden_states = True check_hidden_states_output(inputs_dict, config, model_class) def test_attention_outputs(self): def check_attention_output(inputs_dict, config, model_class): config._attn_implementation = "eager" model = model_class(config) model.to(torch_device) model.eval() with torch.no_grad(): outputs = model(**self._prepare_for_class(inputs_dict, model_class)) attentions = outputs.attentions total_stride = reduce(lambda a, b: a * b, config.stage_stride) hidden_size = ( self.model_tester.image_height // total_stride * self.model_tester.image_width // total_stride ) expected_attention_shape = [ self.model_tester.num_attention_heads, hidden_size, hidden_size, ] for i, attention in enumerate(attentions): self.assertListEqual( list(attention.shape[-3:]), expected_attention_shape, ) config, inputs_dict = self.model_tester.prepare_config_and_inputs_for_common() for model_class in self.all_model_classes: inputs_dict["output_attentions"] = True check_attention_output(inputs_dict, config, model_class) # check that output_hidden_states also work using config del inputs_dict["output_attentions"] config.output_attentions = True check_attention_output(inputs_dict, config, model_class) @slow def test_model_from_pretrained(self): from_pretrained_ids = ["zju-community/efficientloftr"] for model_name in from_pretrained_ids: model = EfficientLoFTRForKeypointMatching.from_pretrained(model_name) self.assertIsNotNone(model) def test_forward_labels_should_be_none(self): config, inputs_dict = self.model_tester.prepare_config_and_inputs_for_common() for model_class in self.all_model_classes: model = model_class(config) model.to(torch_device) model.eval() with torch.no_grad(): model_inputs = self._prepare_for_class(inputs_dict, model_class) # Provide an arbitrary sized Tensor as labels to model inputs model_inputs["labels"] = torch.rand((128, 128)) with self.assertRaises(ValueError) as cm: model(**model_inputs) self.assertEqual(ValueError, cm.exception.__class__) def test_batching_equivalence(self, atol=1e-5, rtol=1e-5): """ This test is overwritten because the model outputs do not contain only regressive values but also keypoint locations. Similarly to the problem discussed about SuperGlue implementation [here](https://github.com/huggingface/transformers/pull/29886#issuecomment-2482752787), the consequence of having different scores for matching, makes the maximum indices differ. These indices are being used to compute the keypoint coordinates. The keypoint coordinates, in the model outputs, are floating point tensors, so the original implementation of this test cover this case. But the resulting tensors may have differences exceeding the relative and absolute tolerance. Therefore, similarly to SuperGlue integration test, for the key "keypoints" in the model outputs, we check the number of differences in keypoint coordinates being less than a TODO given number """ def recursive_check(batched_object, single_row_object, model_name, key): if isinstance(batched_object, (list, tuple)): for batched_object_value, single_row_object_value in zip(batched_object, single_row_object): recursive_check(batched_object_value, single_row_object_value, model_name, key) elif isinstance(batched_object, dict): for batched_object_value, single_row_object_value in zip( batched_object.values(), single_row_object.values() ): recursive_check(batched_object_value, single_row_object_value, model_name, key) # do not compare returned loss (0-dim tensor) / codebook ids (int) / caching objects elif batched_object is None or not isinstance(batched_object, torch.Tensor): return elif batched_object.dim() == 0: return # do not compare int or bool outputs as they are mostly computed with max/argmax/topk methods which are # very sensitive to the inputs (e.g. tiny differences may give totally different results) elif not torch.is_floating_point(batched_object): return else: # indexing the first element does not always work # e.g. models that output similarity scores of size (N, M) would need to index [0, 0] slice_ids = [slice(0, index) for index in single_row_object.shape] batched_row = batched_object[slice_ids] if key == "keypoints": batched_row = torch.sum(batched_row, dim=-1) single_row_object = torch.sum(single_row_object, dim=-1) tolerance = 0.02 * single_row_object.shape[-1] self.assertTrue( torch.sum(~torch.isclose(batched_row, single_row_object, rtol=rtol, atol=atol)) < tolerance ) else: self.assertFalse( torch.isnan(batched_row).any(), f"Batched output has `nan` in {model_name} for key={key}" ) self.assertFalse( torch.isinf(batched_row).any(), f"Batched output has `inf` in {model_name} for key={key}" ) self.assertFalse( torch.isnan(single_row_object).any(), f"Single row output has `nan` in {model_name} for key={key}", ) self.assertFalse( torch.isinf(single_row_object).any(), f"Single row output has `inf` in {model_name} for key={key}", ) try: torch.testing.assert_close(batched_row, single_row_object, atol=atol, rtol=rtol) except AssertionError as e: msg = f"Batched and Single row outputs are not equal in {model_name} for key={key}.\n\n" msg += str(e) raise AssertionError(msg) config, batched_input = self.model_tester.prepare_config_and_inputs_for_common() set_config_for_less_flaky_test(config) for model_class in self.all_model_classes: config.output_hidden_states = True model_name = model_class.__name__ if hasattr(self.model_tester, "prepare_config_and_inputs_for_model_class"): config, batched_input = self.model_tester.prepare_config_and_inputs_for_model_class(model_class) batched_input_prepared = self._prepare_for_class(batched_input, model_class) model = model_class(config).to(torch_device).eval() set_model_for_less_flaky_test(model) batch_size = self.model_tester.batch_size single_row_input = {} for key, value in batched_input_prepared.items(): if isinstance(value, torch.Tensor) and value.shape[0] % batch_size == 0: # e.g. musicgen has inputs of size (bs*codebooks). in most cases value.shape[0] == batch_size single_batch_shape = value.shape[0] // batch_size single_row_input[key] = value[:single_batch_shape] else: single_row_input[key] = value with torch.no_grad(): model_batched_output = model(**batched_input_prepared) model_row_output = model(**single_row_input) if isinstance(model_batched_output, torch.Tensor): model_batched_output = {"model_output": model_batched_output} model_row_output = {"model_output": model_row_output} for key in model_batched_output: # DETR starts from zero-init queries to decoder, leading to cos_similarity = `nan` if hasattr(self, "zero_init_hidden_state") and "decoder_hidden_states" in key: model_batched_output[key] = model_batched_output[key][1:] model_row_output[key] = model_row_output[key][1:] recursive_check(model_batched_output[key], model_row_output[key], model_name, key) def prepare_imgs(): dataset = load_dataset("hf-internal-testing/image-matching-test-dataset", split="train") image1 = dataset[0]["image"] image2 = dataset[1]["image"] image3 = dataset[2]["image"] return [[image1, image2], [image3, image2]] @require_torch @require_vision class EfficientLoFTRModelIntegrationTest(unittest.TestCase): @cached_property def default_image_processor(self): return AutoImageProcessor.from_pretrained("zju-community/efficientloftr") if is_vision_available() else None @slow def test_inference(self): model = EfficientLoFTRForKeypointMatching.from_pretrained( "zju-community/efficientloftr", attn_implementation="eager" ).to(torch_device) preprocessor = self.default_image_processor images = prepare_imgs() inputs = preprocessor(images=images, return_tensors="pt").to(torch_device) with torch.no_grad(): outputs = model(**inputs, output_hidden_states=True, output_attentions=True) predicted_top10 = torch.topk(outputs.matching_scores[0, 0], k=10) predicted_top10_matches_indices = predicted_top10.indices predicted_top10_matching_scores = predicted_top10.values expected_number_of_matches = 4800 expected_matches_shape = torch.Size((len(images), 2, expected_number_of_matches)) expected_matching_scores_shape = torch.Size((len(images), 2, expected_number_of_matches)) expected_top10_matches_indices = torch.tensor( [3145, 3065, 3143, 3144, 1397, 1705, 3151, 2422, 3066, 2342], dtype=torch.int64, device=torch_device ) expected_top10_matching_scores = torch.tensor( [0.9998, 0.9997, 0.9997, 0.9996, 0.9996, 0.9996, 0.9996, 0.9995, 0.9995, 0.9995], device=torch_device ) self.assertEqual(outputs.matches.shape, expected_matches_shape) self.assertEqual(outputs.matching_scores.shape, expected_matching_scores_shape) torch.testing.assert_close( predicted_top10_matches_indices, expected_top10_matches_indices, rtol=5e-3, atol=5e-3 ) torch.testing.assert_close( predicted_top10_matching_scores, expected_top10_matching_scores, rtol=5e-3, atol=5e-3 )