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webvid_covr_exp.py
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178 lines (132 loc) · 6.27 KB
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import datetime
import time
from pathlib import Path
import einops
import torch
import torch.nn.functional as F
from src.test.webvid_covr import eval_recall
from src.tools.files import json_dump
class TestWebVidCoVRTextOnly:
def __init__(self, remove_self_similarity=True):
self.remove_self_similarity = remove_self_similarity
@torch.no_grad()
def __call__(self, model, data_loader, fabric):
model.eval()
fabric.print("Computing features for evaluation...")
start_time = time.time()
tar_img_feats = []
query_feats = []
captions = []
pair_ids = []
for _, tar_feat, caption, pair_id, *_ in data_loader:
pair_ids.extend(pair_id.cpu().numpy().tolist())
captions.extend(caption)
device = pair_id.device
text = model.tokenizer(
caption,
padding="longest",
truncation=True,
max_length=64,
return_tensors="pt",
).to(device)
# Shift encoder
query_embs = model.text_encoder(
text.input_ids,
attention_mask=text.attention_mask,
return_dict=True,
mode="text",
)
query_feat = query_embs.last_hidden_state[:, 0, :]
query_feat = F.normalize(model.text_proj(query_feat), dim=-1)
query_feats.append(query_feat.cpu())
# Encode the target image
tar_img_feats.append(tar_feat.cpu())
query_feats = torch.cat(query_feats, dim=0)
tar_img_feats = torch.cat(tar_img_feats, dim=0)
query_feats = F.normalize(query_feats, dim=-1)
tar_img_feats = F.normalize(tar_img_feats, dim=-1)
ref_img_ids = [data_loader.dataset.pairid2ref[pair_id] for pair_id in pair_ids]
tar_img_ids = [data_loader.dataset.pairid2tar[pair_id] for pair_id in pair_ids]
ref_img_ids = torch.tensor(ref_img_ids, dtype=torch.long)
tar_img_ids = torch.tensor(tar_img_ids, dtype=torch.long)
if fabric.world_size > 1:
# Gather tensors from every process
query_feats = fabric.all_gather(query_feats)
tar_img_feats = fabric.all_gather(tar_img_feats)
ref_img_ids = fabric.all_gather(ref_img_ids)
tar_img_ids = fabric.all_gather(tar_img_ids)
query_feats = einops.rearrange(query_feats, "d b e -> (d b) e")
tar_img_feats = einops.rearrange(tar_img_feats, "d b e -> (d b) e")
ref_img_ids = einops.rearrange(ref_img_ids, "d b -> (d b)")
tar_img_ids = einops.rearrange(tar_img_ids, "d b -> (d b)")
if fabric.global_rank == 0:
sim_q2t = (query_feats @ tar_img_feats.t()).cpu().numpy()
if self.remove_self_similarity:
for i in range(len(ref_img_ids)):
for j in range(len(tar_img_ids)):
if ref_img_ids[i] == tar_img_ids[j]:
sim_q2t[i][j] = -10
total_time = time.time() - start_time
total_time_str = str(datetime.timedelta(seconds=int(total_time)))
print("Evaluation time {}".format(total_time_str))
recalls = eval_recall(sim_q2t)
recalls["annotation"] = Path(data_loader.dataset.annotation_pth).name
fabric.print(recalls)
# Save results
self_sim = "" if self.remove_self_similarity else "_ss"
json_dump(recalls, f"recalls_covr_txt{self_sim}.json")
print(f"Recalls saved in {Path.cwd()} as recalls_covr_txt{self_sim}.json")
fabric.barrier()
class TestWebVidCoVRVisualOnly:
def __init__(self):
pass
@staticmethod
@torch.no_grad()
def __call__(model, data_loader, fabric):
model.eval()
fabric.print("Computing features for evaluation...")
start_time = time.time()
tar_img_feats = []
query_feats = []
pair_ids = []
for ref_img, tar_feat, _, pair_id, *_ in data_loader:
pair_ids.extend(pair_id.cpu().numpy().tolist())
ref_img_embs = model.visual_encoder(ref_img)
query_feat = F.normalize(model.vision_proj(ref_img_embs[:, 0, :]), dim=-1)
query_feats.append(query_feat.cpu())
# Encode the target image
tar_img_feats.append(tar_feat.cpu())
query_feats = torch.cat(query_feats, dim=0)
tar_img_feats = torch.cat(tar_img_feats, dim=0)
query_feats = F.normalize(query_feats, dim=-1)
tar_img_feats = F.normalize(tar_img_feats, dim=-1)
ref_img_ids = [data_loader.dataset.pairid2ref[pair_id] for pair_id in pair_ids]
tar_img_ids = [data_loader.dataset.pairid2tar[pair_id] for pair_id in pair_ids]
ref_img_ids = torch.tensor(ref_img_ids, dtype=torch.long)
tar_img_ids = torch.tensor(tar_img_ids, dtype=torch.long)
if fabric.world_size > 1:
# Gather tensors from every process
query_feats = fabric.all_gather(query_feats)
tar_img_feats = fabric.all_gather(tar_img_feats)
ref_img_ids = fabric.all_gather(ref_img_ids)
tar_img_ids = fabric.all_gather(tar_img_ids)
query_feats = einops.rearrange(query_feats, "d b e -> (d b) e")
tar_img_feats = einops.rearrange(tar_img_feats, "d b e -> (d b) e")
ref_img_ids = einops.rearrange(ref_img_ids, "d b -> (d b)")
tar_img_ids = einops.rearrange(tar_img_ids, "d b -> (d b)")
if fabric.global_rank == 0:
sim_q2t = (query_feats @ tar_img_feats.t()).cpu().numpy()
# Add zeros where ref_img_id == tar_img_id
for i in range(len(ref_img_ids)):
for j in range(len(tar_img_ids)):
if ref_img_ids[i] == tar_img_ids[j]:
sim_q2t[i][j] = -10
total_time = time.time() - start_time
total_time_str = str(datetime.timedelta(seconds=int(total_time)))
print("Evaluation time {}".format(total_time_str))
recalls = eval_recall(sim_q2t)
fabric.print(recalls)
# Save results
json_dump(recalls, "recalls_covr.json")
print(f"Recalls saved in {Path.cwd()} as recalls_covr.json")
fabric.barrier()