mirror of
https://github.com/finegrain-ai/refiners.git
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352 lines
14 KiB
Python
352 lines
14 KiB
Python
from pathlib import Path
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from typing import cast
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import numpy as np
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import pytest
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import torch
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from PIL import Image
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from segment_anything_hq import ( # type: ignore
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SamPredictor as SamPredictorHQ,
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sam_model_registry as sam_model_registry_hq, # type: ignore
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)
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from segment_anything_hq.modeling.sam import Sam # type: ignore
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from tests.foundationals.segment_anything.utils import FacebookSAM, FacebookSAMPredictorHQ, SAMPrompt
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from torch.optim.sgd import SGD
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from refiners.fluxion.utils import image_to_tensor, load_from_safetensors, no_grad
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from refiners.foundationals.segment_anything.hq_sam import (
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CompressViTFeat,
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EmbeddingEncoder,
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HQSAMAdapter,
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HQTokenMLP,
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MaskDecoderTokensExtender,
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PredictionsPostProc,
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)
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from refiners.foundationals.segment_anything.model import ImageEmbedding, SegmentAnythingH
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@pytest.fixture(scope="module")
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def one_prompt() -> SAMPrompt:
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return SAMPrompt(box_points=[[(4, 13), (1007, 1023)]])
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@pytest.fixture(scope="module")
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def tennis(ref_path: Path) -> Image.Image:
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return Image.open(ref_path / "tennis.png").convert("RGB") # type: ignore
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@pytest.fixture
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def sam_h(sam_h_weights_path: Path, test_device: torch.device) -> SegmentAnythingH:
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# HQSAMAdapter is designed to be used with single-output only, hence multimask_output=False.
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sam_h = SegmentAnythingH(multimask_output=False, device=test_device)
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sam_h.load_from_safetensors(tensors_path=sam_h_weights_path)
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return sam_h
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@pytest.fixture(scope="module")
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def reference_sam_h(sam_h_hq_adapter_unconverted_weights_path: Path, test_device: torch.device) -> FacebookSAM:
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sam_h = cast(FacebookSAM, sam_model_registry_hq["vit_h"](checkpoint=sam_h_hq_adapter_unconverted_weights_path))
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return sam_h.to(device=test_device)
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@pytest.fixture(scope="module")
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def reference_sam_h_predictor(reference_sam_h: FacebookSAM) -> FacebookSAMPredictorHQ:
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predictor = SamPredictorHQ(cast(Sam, reference_sam_h))
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return cast(FacebookSAMPredictorHQ, predictor)
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def test_inject_eject() -> None:
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sam_h = SegmentAnythingH(multimask_output=False)
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initial_repr = repr(sam_h)
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adapter = HQSAMAdapter(sam_h)
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assert repr(sam_h) == initial_repr
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adapter.inject()
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assert repr(sam_h) != initial_repr
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adapter.eject()
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assert repr(sam_h) == initial_repr
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def test_multimask_forbidden() -> None:
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with pytest.raises(NotImplementedError, match="not supported"):
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HQSAMAdapter(target=SegmentAnythingH(multimask_output=True))
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def test_output_shape_hq_adapter(tennis: Image.Image, one_prompt: SAMPrompt) -> None:
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sam_h = SegmentAnythingH(multimask_output=False)
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HQSAMAdapter(sam_h).inject()
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high_res_masks, iou_predictions, low_res_masks = sam_h.predict(tennis, **one_prompt.__dict__)
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assert high_res_masks.shape == (1, 1, 1024, 1024)
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assert iou_predictions.shape == (1, 1)
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assert low_res_masks.shape == (1, 1, 256, 256)
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def test_mask_decoder_tokens_extender() -> None:
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sam_h = SegmentAnythingH(multimask_output=False)
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sam_h.requires_grad_(False)
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# MaskDecoderTokens requires image_embedding context to be set
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image_embedding = torch.randn(2, 256, 64, 64)
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sam_h.mask_decoder.set_image_embedding(image_embedding)
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HQSAMAdapter(sam_h).inject()
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mask_decoder_tokens = sam_h.ensure_find(MaskDecoderTokensExtender)
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tokens_before = mask_decoder_tokens()
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assert tokens_before.shape == torch.Size([2, 6, 256])
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for p in mask_decoder_tokens.parameters():
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match p.shape:
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case torch.Size([5, 256]):
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assert not p.requires_grad
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case torch.Size([1, 256]):
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assert p.requires_grad
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case _:
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raise ValueError
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optimizer = SGD(mask_decoder_tokens.parameters(), lr=10)
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optimizer.zero_grad()
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ones = torch.ones_like(tokens_before)
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loss = torch.nn.functional.mse_loss(tokens_before, ones)
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loss.backward() # pyright: ignore[reportUnknownMemberType]
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optimizer.step() # pyright: ignore[reportUnknownMemberType]
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tokens_after = mask_decoder_tokens()
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assert torch.equal(tokens_before[:, :5, :], tokens_after[:, :5, :])
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assert not torch.equal(tokens_before[:, 5, :], tokens_after[:, 5, :])
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@no_grad()
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def test_early_vit_embedding(
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sam_h: SegmentAnythingH,
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sam_h_hq_adapter_weights_path: Path,
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reference_sam_h: FacebookSAM,
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tennis: Image.Image,
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) -> None:
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HQSAMAdapter(sam_h, weights=load_from_safetensors(sam_h_hq_adapter_weights_path)).inject()
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image_tensor = image_to_tensor(image=tennis.resize(size=(1024, 1024))) # type: ignore
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_ = sam_h.image_encoder(image_tensor.to(sam_h.device))
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early_vit_embedding_refiners = sam_h.use_context(context_name="hq_sam")["early_vit_embedding"]
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_, intermediate_embeddings = reference_sam_h.image_encoder(image_tensor.to(reference_sam_h.device))
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early_vit_embedding = intermediate_embeddings[0]
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assert torch.equal(early_vit_embedding, early_vit_embedding_refiners)
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def test_tokens(sam_h: SegmentAnythingH, sam_h_hq_adapter_weights_path: Path, reference_sam_h: FacebookSAM) -> None:
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HQSAMAdapter(sam_h, weights=load_from_safetensors(sam_h_hq_adapter_weights_path)).inject()
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mask_decoder_tokens_extender = sam_h.mask_decoder.ensure_find(MaskDecoderTokensExtender)
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# HF Token (1, 256)
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assert torch.equal(reference_sam_h.mask_decoder.hf_token.weight, mask_decoder_tokens_extender.hq_token.weight)
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# Regular Tokens (5, 256)
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assert torch.equal(
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torch.cat([reference_sam_h.mask_decoder.iou_token.weight, reference_sam_h.mask_decoder.mask_tokens.weight]),
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mask_decoder_tokens_extender.regular_tokens.weight,
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)
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@no_grad()
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def test_compress_vit_feat(
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sam_h: SegmentAnythingH, sam_h_hq_adapter_weights_path: Path, reference_sam_h: FacebookSAM
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) -> None:
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HQSAMAdapter(sam_h, weights=load_from_safetensors(sam_h_hq_adapter_weights_path)).inject()
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early_vit_embedding = torch.randn(1, 64, 64, 1280, device=sam_h.device, dtype=sam_h.dtype)
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sam_h.set_context(context="hq_sam", value={"early_vit_embedding": early_vit_embedding})
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refiners_output = sam_h.ensure_find(CompressViTFeat)()
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reference_output = reference_sam_h.mask_decoder.compress_vit_feat(early_vit_embedding.permute(0, 3, 1, 2))
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assert torch.equal(refiners_output, reference_output)
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@no_grad()
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def test_embedding_encoder(
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sam_h: SegmentAnythingH, sam_h_hq_adapter_weights_path: Path, reference_sam_h: FacebookSAM
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) -> None:
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HQSAMAdapter(sam_h, weights=load_from_safetensors(sam_h_hq_adapter_weights_path)).inject()
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x = torch.randn(1, 256, 64, 64, device=sam_h.device, dtype=sam_h.dtype)
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sam_h.set_context(context="mask_decoder", value={"image_embedding": x})
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refiners_output = sam_h.ensure_find(EmbeddingEncoder)()
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reference_output = reference_sam_h.mask_decoder.embedding_encoder(x)
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assert torch.equal(refiners_output, reference_output)
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@no_grad()
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def test_hq_token_mlp(
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sam_h: SegmentAnythingH, sam_h_hq_adapter_weights_path: Path, reference_sam_h: FacebookSAM
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) -> None:
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HQSAMAdapter(sam_h, weights=load_from_safetensors(sam_h_hq_adapter_weights_path)).inject()
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x = torch.randn(1, 6, 256, device=sam_h.device, dtype=sam_h.dtype)
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refiners_output = sam_h.ensure_find(HQTokenMLP)(x)
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reference_output = reference_sam_h.mask_decoder.hf_mlp(x[:, -1, :]).unsqueeze(0)
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assert torch.equal(refiners_output, reference_output)
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@pytest.mark.parametrize("hq_mask_only", [True, False])
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def test_predictor(
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sam_h: SegmentAnythingH,
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sam_h_hq_adapter_weights_path: Path,
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hq_mask_only: bool,
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reference_sam_h_predictor: FacebookSAMPredictorHQ,
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tennis: Image.Image,
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one_prompt: SAMPrompt,
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) -> None:
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adapter = HQSAMAdapter(sam_h, weights=load_from_safetensors(sam_h_hq_adapter_weights_path)).inject()
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adapter.hq_mask_only = hq_mask_only
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assert sam_h.ensure_find(PredictionsPostProc).hq_mask_only == hq_mask_only
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# Refiners
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high_res_masks, iou_predictions, low_res_masks = sam_h.predict(tennis, **one_prompt.__dict__)
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refiners_high_res_mask_hq = high_res_masks[0, 0, ...].to(dtype=torch.float32).detach().cpu()
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refiners_low_res_mask_hq = low_res_masks[0, 0, ...].to(dtype=torch.float32).detach().cpu()
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iou_predictions = iou_predictions[0, :].to(dtype=torch.float32).detach().cpu()
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# Reference
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reference_sam_h_predictor.set_image(np.array(tennis))
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predictor_prompt = one_prompt.__dict__["box_points"]
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masks_np, iou_predictions_np, low_res_masks_np = reference_sam_h_predictor.predict(
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box=np.array(predictor_prompt).flatten(),
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multimask_output=False,
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hq_token_only=hq_mask_only,
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)
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reference_high_res_mask_hq = torch.from_numpy(masks_np[0, ...]).to(dtype=torch.float32) # type: ignore
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reference_low_res_mask_hq = torch.from_numpy(low_res_masks_np[0, ...]).to(dtype=torch.float32) # type: ignore
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iou_predictions_np = torch.from_numpy(iou_predictions_np).to(dtype=torch.float32) # type: ignore
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# NOTE: Diff on logits is relatively high,
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# see test_predictor_equal for a stricter version
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assert torch.allclose(
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reference_low_res_mask_hq,
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refiners_low_res_mask_hq,
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atol=4e-3,
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)
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assert (
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torch.abs(reference_high_res_mask_hq - refiners_high_res_mask_hq).flatten().sum() <= 2
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) # The diff on the logits above leads to an absolute diff of 2 pixel on the high res masks
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assert torch.allclose(
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iou_predictions_np,
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torch.max(iou_predictions),
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atol=1e-5,
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)
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@pytest.mark.parametrize("hq_mask_only", [True, False])
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def test_predictor_equal(
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sam_h: SegmentAnythingH,
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sam_h_hq_adapter_weights_path: Path,
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hq_mask_only: bool,
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reference_sam_h_predictor: FacebookSAMPredictorHQ,
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tennis: Image.Image,
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one_prompt: SAMPrompt,
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) -> None:
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adapter = HQSAMAdapter(sam_h, weights=load_from_safetensors(sam_h_hq_adapter_weights_path)).inject()
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adapter.hq_mask_only = hq_mask_only
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assert sam_h.ensure_find(PredictionsPostProc).hq_mask_only == hq_mask_only
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# See in test_sam.py test_predictor_resized_single_output
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# to do torch.equal we need to resize the image before
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# and to use image_embedding as input
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size = (1024, 1024)
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resized_tennis = tennis.resize(size) # type: ignore
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# Reference
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reference_sam_h_predictor.set_image(np.array(resized_tennis))
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predictor_prompt = one_prompt.__dict__["box_points"]
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masks_np, _, low_res_masks_np = reference_sam_h_predictor.predict(
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box=np.array(predictor_prompt).flatten(),
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multimask_output=False,
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hq_token_only=hq_mask_only,
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)
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reference_high_res_mask_hq = torch.from_numpy(masks_np[0, ...]).to(dtype=torch.float32) # type: ignore
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reference_low_res_mask_hq = torch.from_numpy(low_res_masks_np[0, ...]).to(dtype=torch.float32) # type: ignore
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# Refiners
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# We bypass the refiners ViT by using directly the image features and interm_features
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# from the reference implementation: this gives the ability to do torch.equal
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reference_image_embedding = ImageEmbedding(features=reference_sam_h_predictor.features, original_image_size=size)
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adapter.set_context("hq_sam", {"early_vit_embedding": reference_sam_h_predictor.interm_features[0]})
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high_res_masks, _, low_res_masks = sam_h.predict(reference_image_embedding, **one_prompt.__dict__)
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refiners_high_res_mask_hq = high_res_masks[0, 0, ...].to(dtype=torch.float32).detach().cpu()
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refiners_low_res_mask_hq = low_res_masks[0, 0, ...].to(dtype=torch.float32).detach().cpu()
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assert torch.equal(
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reference_low_res_mask_hq,
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refiners_low_res_mask_hq,
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)
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assert torch.abs(reference_high_res_mask_hq - refiners_high_res_mask_hq).flatten().sum() == 0
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@no_grad()
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def test_batch_mask_decoder(sam_h: SegmentAnythingH, sam_h_hq_adapter_weights_path: Path) -> None:
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HQSAMAdapter(sam_h, weights=load_from_safetensors(sam_h_hq_adapter_weights_path)).inject()
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batch_size = 5
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image_embedding = torch.randn(1, 256, 64, 64, device=sam_h.device, dtype=sam_h.dtype).repeat(batch_size, 1, 1, 1)
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mask_embedding = torch.randn(1, 256, 64, 64, device=sam_h.device, dtype=sam_h.dtype).repeat(batch_size, 1, 1, 1)
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dense_positional_embedding = torch.randn(1, 256, 64, 64, device=sam_h.device, dtype=sam_h.dtype).repeat(
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batch_size, 1, 1, 1
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)
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point_embedding = torch.randn(1, 2, 256, device=sam_h.device, dtype=sam_h.dtype).repeat(batch_size, 1, 1)
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early_vit_embedding = torch.randn(1, 64, 64, 1280, device=sam_h.device, dtype=sam_h.dtype).repeat(
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batch_size, 1, 1, 1
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)
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sam_h.mask_decoder.set_image_embedding(image_embedding)
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sam_h.mask_decoder.set_mask_embedding(mask_embedding)
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sam_h.mask_decoder.set_point_embedding(point_embedding)
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sam_h.mask_decoder.set_dense_positional_embedding(dense_positional_embedding)
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sam_h.mask_decoder.set_context(
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context="hq_sam", value={"early_vit_embedding": early_vit_embedding.to(sam_h.device, sam_h.dtype)}
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)
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mask_prediction, iou_prediction = sam_h.mask_decoder()
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assert mask_prediction.shape == (batch_size, 1, 256, 256)
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assert iou_prediction.shape == (batch_size, 1)
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assert torch.equal(mask_prediction[0], mask_prediction[1])
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def test_hq_sam_load_save_weights(
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sam_h: SegmentAnythingH, sam_h_hq_adapter_weights_path: Path, test_device: torch.device
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) -> None:
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weights = load_from_safetensors(sam_h_hq_adapter_weights_path, device=test_device)
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hq_sam_adapter = HQSAMAdapter(sam_h)
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out_weights_init = hq_sam_adapter.weights
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assert set(out_weights_init.keys()) == set(weights.keys())
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hq_sam_adapter = HQSAMAdapter(sam_h, weights=weights)
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out_weights = hq_sam_adapter.weights
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assert set(out_weights.keys()) == set(weights.keys())
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for key in out_weights.keys():
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assert torch.equal(out_weights[key], weights[key])
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