Spaces:
Sleeping
Sleeping
# Copyright (c) Facebook, Inc. and its affiliates. | |
import random | |
from typing import Optional, Tuple | |
import torch | |
from densepose.converters import ToChartResultConverterWithConfidences | |
from .densepose_base import DensePoseBaseSampler | |
class DensePoseConfidenceBasedSampler(DensePoseBaseSampler): | |
""" | |
Samples DensePose data from DensePose predictions. | |
Samples for each class are drawn using confidence value estimates. | |
""" | |
def __init__( | |
self, | |
confidence_channel: str, | |
count_per_class: int = 8, | |
search_count_multiplier: Optional[float] = None, | |
search_proportion: Optional[float] = None, | |
): | |
""" | |
Constructor | |
Args: | |
confidence_channel (str): confidence channel to use for sampling; | |
possible values: | |
"sigma_2": confidences for UV values | |
"fine_segm_confidence": confidences for fine segmentation | |
"coarse_segm_confidence": confidences for coarse segmentation | |
(default: "sigma_2") | |
count_per_class (int): the sampler produces at most `count_per_class` | |
samples for each category (default: 8) | |
search_count_multiplier (float or None): if not None, the total number | |
of the most confident estimates of a given class to consider is | |
defined as `min(search_count_multiplier * count_per_class, N)`, | |
where `N` is the total number of estimates of the class; cannot be | |
specified together with `search_proportion` (default: None) | |
search_proportion (float or None): if not None, the total number of the | |
of the most confident estimates of a given class to consider is | |
defined as `min(max(search_proportion * N, count_per_class), N)`, | |
where `N` is the total number of estimates of the class; cannot be | |
specified together with `search_count_multiplier` (default: None) | |
""" | |
super().__init__(count_per_class) | |
self.confidence_channel = confidence_channel | |
self.search_count_multiplier = search_count_multiplier | |
self.search_proportion = search_proportion | |
assert (search_count_multiplier is None) or (search_proportion is None), ( | |
f"Cannot specify both search_count_multiplier (={search_count_multiplier})" | |
f"and search_proportion (={search_proportion})" | |
) | |
def _produce_index_sample(self, values: torch.Tensor, count: int): | |
""" | |
Produce a sample of indices to select data based on confidences | |
Args: | |
values (torch.Tensor): an array of size [n, k] that contains | |
estimated values (U, V, confidences); | |
n: number of channels (U, V, confidences) | |
k: number of points labeled with part_id | |
count (int): number of samples to produce, should be positive and <= k | |
Return: | |
list(int): indices of values (along axis 1) selected as a sample | |
""" | |
k = values.shape[1] | |
if k == count: | |
index_sample = list(range(k)) | |
else: | |
# take the best count * search_count_multiplier pixels, | |
# sample from them uniformly | |
# (here best = smallest variance) | |
_, sorted_confidence_indices = torch.sort(values[2]) | |
if self.search_count_multiplier is not None: | |
search_count = min(int(count * self.search_count_multiplier), k) | |
elif self.search_proportion is not None: | |
search_count = min(max(int(k * self.search_proportion), count), k) | |
else: | |
search_count = min(count, k) | |
sample_from_top = random.sample(range(search_count), count) | |
index_sample = sorted_confidence_indices[:search_count][sample_from_top] | |
return index_sample | |
def _produce_labels_and_results(self, instance) -> Tuple[torch.Tensor, torch.Tensor]: | |
""" | |
Method to get labels and DensePose results from an instance, with confidences | |
Args: | |
instance (Instances): an instance of `DensePoseChartPredictorOutputWithConfidences` | |
Return: | |
labels (torch.Tensor): shape [H, W], DensePose segmentation labels | |
dp_result (torch.Tensor): shape [3, H, W], DensePose results u and v | |
stacked with the confidence channel | |
""" | |
converter = ToChartResultConverterWithConfidences | |
chart_result = converter.convert(instance.pred_densepose, instance.pred_boxes) | |
labels, dp_result = chart_result.labels.cpu(), chart_result.uv.cpu() | |
dp_result = torch.cat( | |
(dp_result, getattr(chart_result, self.confidence_channel)[None].cpu()) | |
) | |
return labels, dp_result | |