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import torch
import torch.nn as nn
import numpy as np
import os
import random
from tqdm import tqdm
from .backbone.clip import tokenize
from core.data import dataloader
from core.model import backbone
from core.model.finetune import Finetune
from torch.utils.data import DataLoader
def get_class_ids_per_task(init_cls_num, inc_cls_num, class_order):
yield class_order[:init_cls_num]
for i in range(init_cls_num, len(class_order), inc_cls_num):
yield class_order[i:i + inc_cls_num]
def get_class_names(classes_names, prev_cls_num, accu_cls_num):
return [classes_names[i] for i in range(prev_cls_num, accu_cls_num)]
def shrink_cov(cov):
diag_mean = torch.mean(torch.diagonal(cov))
off_diag = cov.clone()
off_diag.fill_diagonal_(0.0)
mask = off_diag != 0.0
off_diag_mean = (off_diag*mask).sum() / mask.sum()
iden = torch.eye(cov.shape[0], device=cov.device)
alpha1 = 1
alpha2 = 1
cov_ = cov + (alpha1*diag_mean*iden) + (alpha2*off_diag_mean*(1-iden))
return cov_
def sample(mean, cov, size, shrink=False):
vec = torch.randn(size, mean.shape[-1], device=mean.device)
if shrink:
cov = shrink_cov(cov)
sqrt_cov = torch.linalg.cholesky(cov)
vec = vec @ sqrt_cov.t()
vec = vec + mean
return vec
def seed_everything(seed=0):
"""Fix all random seeds"""
random.seed(seed)
np.random.seed(seed)
torch.manual_seed(seed)
torch.cuda.manual_seed_all(seed)
torch.backends.cudnn.deterministic = True
os.environ['PYTHONHASHSEED'] = str(seed)
"""
This clas refer to the following repository:
https://github.com/linlany/RAPF
"""
class ClassIncrementalCLIP(nn.Module):
def __init__(self, model, **kwargs):
super().__init__()
device = kwargs['device']
fp16 = kwargs['fp16']
mix_bias = kwargs['mix_bias']
self.prompt_template = kwargs['prompt_template']
self.initial_increment = kwargs['init_cls_num']
self.increment = kwargs['inc_cls_num']
self.device = device
self.classes_names = None
# self.class_order = kwargs['class_order']
self.visual = model.visual
self.transformer = model.transformer
self.positional_embedding = model.positional_embedding
self.token_embedding = model.token_embedding
self.ln_final = model.ln_final
self.text_projection = model.text_projection
self.logit_scale = model.logit_scale
# pdb.set_trace()
# self.class_ids_per_task = list(get_class_ids_per_task(self.initial_increment, self.increment, self.class_order))
self.current_class_names = []
self.text_tokens = None
self.dtype = torch.float16 if fp16 else torch.float32
self.adapter = nn.Linear(512, 512, bias=False ,device=device)
self.clip_type = model.dtype
# old adapter
self.old_adapter = None
self.old_edge_samples = []
self.old_edge_samples_labels = []
self.old_edge_samples_nearest_labels = []
# class stat
self.class_mean_list = []
self.class_cov_list = []
self.class_diff = None
self.nearest_class = None
self.class_edge_distance = []
self.mix_b = mix_bias
def encode_text(self, text, prompt=False):
x = self.token_embedding(text).type(self.clip_type) # [batch_size, n_ctx, d_model]
x = x + self.positional_embedding.type(self.clip_type)
x = x.permute(1, 0, 2) # NLD -> LND
x = self.transformer(x)
x = x.permute(1, 0, 2) # LND -> NLD
x = self.ln_final(x)
x = x[torch.arange(x.shape[0]), text.argmax(dim=-1)] @ self.text_projection
return x
def encode_image(self, image):
# 确保输入数据类型与 self.visual 的权重类型一致
image = image.to(self.clip_type)
return self.visual(image)
@torch.no_grad()
def get_class_name_features(self):
class_name_features = self.encode_text(self.text_tokens)
return class_name_features.type(torch.float32)
def forward(self, image, ori_ima_f=False, memory_data=None, not_ini=False, edge_sample=None, prompt=False):
image = image.type(torch.float16)
with torch.no_grad():
text_features = self.encode_text(self.text_tokens)
with torch.no_grad():
image_features = self.encode_image(image)
original_image_features = image_features.clone()
if memory_data is not None:
memory_data = memory_data.type(self.dtype)
image_features = torch.cat([image_features, memory_data], dim=0)
if edge_sample is not None:
edge_sample = edge_sample.type(self.dtype)
edge_num = edge_sample.shape[0]
image_features = torch.cat([image_features, edge_sample], dim=0)
image_features = self.adapter(image_features.type(self.dtype).detach()).type(self.clip_type)
image_features = image_features / image_features.norm(dim=1, keepdim=True)
if edge_sample is not None:
edge_sample_features = image_features[-edge_num:]
image_features = image_features[:-edge_num]
text_features = text_features / text_features.norm(dim=1, keepdim=True)
logit_scale = self.logit_scale.exp()
logits_per_image = logit_scale * image_features @ text_features.t().type(image_features.dtype)
probs = logits_per_image
if not_ini:
with torch.no_grad():
old_memory_feature = self.old_adapter(memory_data)
old_memory_feature = old_memory_feature / old_memory_feature.norm(dim=1, keepdim=True)
if edge_sample is not None:
return probs, image_features, old_memory_feature, edge_sample_features
return probs, image_features, old_memory_feature, text_features
if ori_ima_f:
if memory_data is not None:
image_features = image_features[:-memory_data.shape[0]]
return probs, original_image_features, image_features
return probs, image_features, None, None
def adaptation(self, task_id, prev_cls_num, accu_cls_num, threshold=0):
self.current_class_names += get_class_names(self.classes_names, prev_cls_num, accu_cls_num)
self.text_tokens = tokenize(
[self.prompt_template.format(c) for c in self.current_class_names]
).to(self.device)
self.text_end = self.text_tokens.max(dim=-1)[1]
self.class_name_features = self.get_class_name_features()
self.class_name_features = self.class_name_features / self.class_name_features.norm(dim=-1, p=2, keepdim=True)
self.queue_empty = True
self.hard_pairs = None
if task_id>0:
self.old_adapter = copy.deepcopy(self.adapter)
dist_list = []
for k, class_name_feature in enumerate(self.class_name_features[:prev_cls_num]):
diff = torch.cdist(self.class_name_features[prev_cls_num:].type(torch.float32), class_name_feature.unsqueeze(0).type(torch.float32)).squeeze()
dist_list.append(diff)
dist_list = torch.stack(dist_list)
self.class_diff = dist_list
mask = self.class_diff < threshold
indices = torch.nonzero(mask)
self.hard_new_class = torch.unique(indices[:,1]) + self.initial_increment+(task_id-1) * self.increment
num_hard_class = self.hard_new_class.shape[0]
self.hard_pairs = indices
self.hard_pairs[:,1] = self.hard_pairs[:,1]+self.initial_increment+(task_id-1) * self.increment
def get_old_edge_samples(self, batch_size):
random_select = torch.randperm(self.old_edge_samples.shape[0])[:batch_size]
return self.old_edge_samples[random_select], self.old_edge_samples_labels[random_select], self.old_edge_samples_nearest_labels[random_select]
def analyze_mean_cov(self, features, labels):
label = torch.sort(torch.unique(labels))[0]
for l in label:
index = torch.nonzero(labels == l)
index = index.squeeze()
class_data = features[index]
mean = class_data.mean(dim=0)
cov = torch.cov(class_data.t()) + 1e-4* torch.eye(class_data.shape[-1], device=class_data.device)
distance = torch.cdist(class_data, mean.unsqueeze(0)).squeeze()
max_distance = torch.sort(distance)[0][-10:]
self.class_edge_distance.append((max_distance.mean()-max_distance.min(), max_distance.max() - max_distance.mean(), max_distance.mean()))
self.class_mean_list.append(mean)
self.class_cov_list.append(cov)
def mix_matrix(self):
if self.old_adapter is not None:
weight_new = self.adapter.weight.data
weight_old = self.old_adapter.weight.data
dist = (weight_new - weight_old).abs()
U_old, S_old, V_old = torch.linalg.svd(weight_old)
P_new = U_old.T @ weight_new
dist = (P_new - torch.diag(S_old)@V_old).abs()
mask = dist / dist.max()
mask += self.mix_b
mask = torch.clamp(mask, max=1)
right = P_new * mask + torch.diag(S_old)@V_old * (1-mask)
weight = U_old @ right
self.adapter.weight.data = weight
"""
This clas refer to the following repository:
https://github.com/linlany/RAPF
"""
class RAPF(nn.Module):
def __init__(self, backbone, **kwargs):
super().__init__()
seed = kwargs['seed']
seed_everything(seed)
self.backbone = backbone
self.kwargs = kwargs
self.model = ClassIncrementalCLIP(self.backbone, **kwargs)
self.device = kwargs['device']
self.init_cls_num = kwargs['init_cls_num']
self.inc_cls_num = kwargs['inc_cls_num']
self.beta = kwargs['beta']
self.shrinkage = kwargs['shrinkage']
self.threshold = kwargs['threshold']
self.train_batch_size = kwargs['train_batch_size']
self.batch_size = kwargs['batch_size']
self.num_workers = kwargs['num_workers']
self.seed = seed
self.prev_cls_num = 0
self.accu_cls_num = 0
def before_task(self, task_id, buffer, train_loader, test_loaders):
self.task_id = task_id
if self.task_id == 0:
self.accu_cls_num = self.init_cls_num
else:
self.accu_cls_num += self.inc_cls_num
self.model.adaptation(task_id, self.prev_cls_num, self.accu_cls_num, self.threshold)
if self.task_id > 0:
random_class_order_list = list(range(self.init_cls_num+(self.task_id-1)*self.inc_cls_num))
random.shuffle(random_class_order_list)
self.random_class_order_list = random_class_order_list
def after_task(self, task_idx, buffer, train_loader, test_loaders):
sample_data = []
sample_target = []
sample_after_adapt_feature = []
model = self.model
for batch in tqdm(train_loader, total=len(train_loader)):
feats = batch['image']
target = batch['label']
feats, target = feats.to(self.device), target.to(self.device)
with torch.no_grad():
_, ori_ima_feat, after_adapt_feature = model(feats, ori_ima_f=True)
sample_data.append(ori_ima_feat)
sample_target.append(target)
sample_after_adapt_feature.append(after_adapt_feature)
sample_target = torch.cat(sample_target, dim=0)
sample_data = torch.cat(sample_data, dim=0)
sample_after_adapt_feature = torch.cat(sample_after_adapt_feature, dim=0)
model.analyze_mean_cov(sample_data, sample_target)
model.mix_matrix()
self.prev_cls_num = self.accu_cls_num
def get_parameters(self, config):
return self.model.adapter.parameters()
def observe(self, data):
loss = torch.tensor(0.0).to(self.device)
loss_c = torch.tensor(0.0).to(self.device)
loss_hinge = torch.tensor(0.0).to(self.device)
inputs = data['image']
targets = data['label']
inputs, targets = inputs.to(self.device), targets.to(self.device)
sg_inputs = None
edge_sample = None
ori_targets = targets.clone()
model = self.model
if self.task_id > 0:
sg_inputs = []
sg_targets = []
# num of classes per batch. Ensure an epoch traverses all classes at least once.
# For exemple, if there are 100 classes and 50 batches per epoch , there will be 2 classes per batch.
random_class_order_list = self.random_class_order_list
batch_id = data['batch_id']
if self.inc_cls_num == 5:
list_for_one_batch = [random_class_order_list[batch_id*4%len(random_class_order_list)], random_class_order_list[(batch_id*4+1)%len(random_class_order_list)], random_class_order_list[(batch_id*4+2)%len(random_class_order_list)], random_class_order_list[(batch_id*4+3)%len(random_class_order_list)]]
else:
list_for_one_batch = [random_class_order_list[batch_id*2%len(random_class_order_list)], random_class_order_list[(batch_id*2+1)%len(random_class_order_list)]]
for i in list_for_one_batch:
sg_inputs.append(sample(model.class_mean_list[i], model.class_cov_list[i],int(10*self.beta), shrink=self.shrinkage))
sg_targets.append(torch.ones(int(10*self.beta), dtype=torch.long, device=self.device)*i)
sg_inputs = torch.cat(sg_inputs, dim=0)
sg_targets = torch.cat(sg_targets, dim=0)
targets = torch.cat([targets, sg_targets], dim=0)
if model.hard_pairs is not None and model.hard_pairs.shape[0] > 0:
edge_sample = []
edge_p_target = []
edge_n_target = []
for hard_pair in model.hard_pairs:
edge_sample.append(sample(model.class_mean_list[hard_pair[0]], model.class_cov_list[hard_pair[0]],int(20*self.beta), shrink=self.shrinkage))
edge_p_target.append(torch.ones(int(20*self.beta), dtype=torch.long, device=self.device)*hard_pair[0])
edge_n_target.append(torch.ones(int(20*self.beta), dtype=torch.long, device=self.device)*hard_pair[1])
edge_sample = torch.cat(edge_sample, dim=0)
edge_p_target = torch.cat(edge_p_target, dim=0)
edge_n_target = torch.cat(edge_n_target, dim=0)
if self.task_id > 0:
not_ini = True
else:
not_ini = False
outputs, _, __, edge_sample_features = model(inputs, memory_data=sg_inputs, not_ini=not_ini, edge_sample=edge_sample, prompt=False)
if self.task_id > 0:
if edge_sample is not None:
edge_sample_features = edge_sample_features / edge_sample_features.norm(dim=-1, keepdim=True)
edge_target_features = model.class_name_features[edge_p_target].type(edge_sample_features.dtype)
edge_target_features = edge_target_features / edge_target_features.norm(dim=-1, keepdim=True)
edge_nearest_class_features = model.class_name_features[edge_n_target].type(edge_sample_features.dtype)
edge_nearest_class_features = edge_nearest_class_features / edge_nearest_class_features.norm(dim=-1, keepdim=True)
loss_hinge = torch.relu(- (edge_sample_features * edge_target_features.clone().detach()).sum(-1) + (edge_sample_features * edge_nearest_class_features.clone().detach()).sum(-1) + 0.1).mean()
loss_c = torch.nn.functional.cross_entropy(outputs, targets.detach())
if edge_sample is not None:
loss = loss_c + loss_hinge
else:
loss = loss_c
# Return tuple [pred, acc, loss]
# with torch.no_grad():
# prob_outputs = torch.nn.functional.softmax(outputs, dim=-1)
predicted_labels = outputs.argmax(dim=1)
predicted_labels = predicted_labels[:ori_targets.size(0)]
corrects = (predicted_labels == ori_targets).sum().item()
total_predictions = ori_targets.size(0)
accuracy = corrects / total_predictions
return predicted_labels, accuracy, loss
def inference(self, data):
feats = data['image']
target = data['label']
feats, target = feats.to(self.device), target.to(self.device)
model = self.model
with torch.no_grad():
outputs, _, __, ___ = model(feats, prompt=False)
prob_outputs = torch.nn.functional.softmax(outputs, dim=-1)
predicted_labels = prob_outputs.argmax(dim=1)
corrects = (predicted_labels == target).sum().item()
total_predictions = target.size(0)
accurcy = corrects / total_predictions
return prob_outputs, accurcy |