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metrics.py
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metrics.py
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from __future__ import absolute_import
from __future__ import division
from __future__ import unicode_literals
from __future__ import print_function
import numpy as np
import torch
def compute_metrics(x):
sx = np.sort(-x, axis=1)
d = np.diag(-x)
d = d[:, np.newaxis]
ind = sx - d
ind = np.where(ind == 0)
ind = ind[1]
metrics = {}
metrics['R1'] = float(np.sum(ind == 0)) * 100 / len(ind)
metrics['R5'] = float(np.sum(ind < 5)) * 100 / len(ind)
metrics['R10'] = float(np.sum(ind < 10)) * 100 / len(ind)
metrics['MR'] = np.median(ind) + 1
metrics["MedianR"] = metrics['MR']
metrics["MeanR"] = np.mean(ind) + 1
metrics["cols"] = [int(i) for i in list(ind)]
return metrics
def print_computed_metrics(metrics):
r1 = metrics['R1']
r5 = metrics['R5']
r10 = metrics['R10']
mr = metrics['MR']
print('R@1: {:.4f} - R@5: {:.4f} - R@10: {:.4f} - Median R: {}'.format(r1, r5, r10, mr))
# below two functions directly come from: https://github.com/Deferf/Experiments
def tensor_text_to_video_metrics(sim_tensor, top_k = [1,5,10]):
if not torch.is_tensor(sim_tensor):
sim_tensor = torch.tensor(sim_tensor)
# Permute sim_tensor so it represents a sequence of text-video similarity matrices.
# Then obtain the double argsort to position the rank on the diagonal
stacked_sim_matrices = sim_tensor.permute(1, 0, 2)
first_argsort = torch.argsort(stacked_sim_matrices, dim = -1, descending= True)
second_argsort = torch.argsort(first_argsort, dim = -1, descending= False)
# Extracts ranks i.e diagonals
ranks = torch.flatten(torch.diagonal(second_argsort, dim1 = 1, dim2 = 2))
# Now we need to extract valid ranks, as some belong to inf padding values
permuted_original_data = torch.flatten(torch.diagonal(sim_tensor, dim1 = 0, dim2 = 2))
mask = ~ torch.logical_or(torch.isinf(permuted_original_data), torch.isnan(permuted_original_data))
valid_ranks = ranks[mask]
# A quick dimension check validates our results, there may be other correctness tests pending
# Such as dot product localization, but that is for other time.
#assert int(valid_ranks.shape[0]) == sum([len(text_dict[k]) for k in text_dict])
if not torch.is_tensor(valid_ranks):
valid_ranks = torch.tensor(valid_ranks)
results = {f"R{k}": float(torch.sum(valid_ranks < k) * 100 / len(valid_ranks)) for k in top_k}
results["MedianR"] = float(torch.median(valid_ranks + 1))
results["MeanR"] = float(np.mean(valid_ranks.numpy() + 1))
results["Std_Rank"] = float(np.std(valid_ranks.numpy() + 1))
results['MR'] = results["MedianR"]
return results
def tensor_video_to_text_sim(sim_tensor):
if not torch.is_tensor(sim_tensor):
sim_tensor = torch.tensor(sim_tensor)
# Code to avoid nans
sim_tensor[sim_tensor != sim_tensor] = float('-inf')
# Forms a similarity matrix for use with rank at k
values, _ = torch.max(sim_tensor, dim=1, keepdim=True)
return torch.squeeze(values).T