| import torch
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| import torch.nn as nn
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| import torch.nn.functional as F
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|
|
| import sys, time, numpy, os, subprocess, pandas, tqdm
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|
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| from loss import lossAV, lossA, lossV
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| from model.talkNetModel import talkNetModel
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|
|
| class talkNet(nn.Module):
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| def __init__(self, lr = 0.0001, lrDecay = 0.95, **kwargs):
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| super(talkNet, self).__init__()
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| self.model = talkNetModel().cuda()
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| self.lossAV = lossAV().cuda()
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| self.lossA = lossA().cuda()
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| self.lossV = lossV().cuda()
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| self.optim = torch.optim.Adam(self.parameters(), lr = lr)
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| self.scheduler = torch.optim.lr_scheduler.StepLR(self.optim, step_size = 1, gamma=lrDecay)
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| print(time.strftime("%m-%d %H:%M:%S") + " Model para number = %.2f"%(sum(param.numel() for param in self.model.parameters()) / 1024 / 1024))
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|
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| def train_network(self, loader, epoch, **kwargs):
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| self.train()
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| self.scheduler.step(epoch - 1)
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| index, top1, loss = 0, 0, 0
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| lr = self.optim.param_groups[0]['lr']
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| for num, (audioFeature, visualFeature, labels) in enumerate(loader, start=1):
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| self.zero_grad()
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| audioEmbed = self.model.forward_audio_frontend(audioFeature[0].cuda())
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| visualEmbed = self.model.forward_visual_frontend(visualFeature[0].cuda())
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| audioEmbed, visualEmbed = self.model.forward_cross_attention(audioEmbed, visualEmbed)
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| outsAV= self.model.forward_audio_visual_backend(audioEmbed, visualEmbed)
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| outsA = self.model.forward_audio_backend(audioEmbed)
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| outsV = self.model.forward_visual_backend(visualEmbed)
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| labels = labels[0].reshape((-1)).cuda()
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| nlossAV, _, _, prec = self.lossAV.forward(outsAV, labels)
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| nlossA = self.lossA.forward(outsA, labels)
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| nlossV = self.lossV.forward(outsV, labels)
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| nloss = nlossAV + 0.4 * nlossA + 0.4 * nlossV
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| loss += nloss.detach().cpu().numpy()
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| top1 += prec
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| nloss.backward()
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| self.optim.step()
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| index += len(labels)
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| sys.stderr.write(time.strftime("%m-%d %H:%M:%S") + \
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| " [%2d] Lr: %5f, Training: %.2f%%, " %(epoch, lr, 100 * (num / loader.__len__())) + \
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| " Loss: %.5f, ACC: %2.2f%% \r" %(loss/(num), 100 * (top1/index)))
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| sys.stderr.flush()
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| sys.stdout.write("\n")
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| return loss/num, lr
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|
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| def evaluate_network(self, loader, evalCsvSave, evalOrig, **kwargs):
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| self.eval()
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| predScores = []
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| for audioFeature, visualFeature, labels in tqdm.tqdm(loader):
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| with torch.no_grad():
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| audioEmbed = self.model.forward_audio_frontend(audioFeature[0].cuda())
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| visualEmbed = self.model.forward_visual_frontend(visualFeature[0].cuda())
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| audioEmbed, visualEmbed = self.model.forward_cross_attention(audioEmbed, visualEmbed)
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| outsAV= self.model.forward_audio_visual_backend(audioEmbed, visualEmbed)
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| labels = labels[0].reshape((-1)).cuda()
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| _, predScore, _, _ = self.lossAV.forward(outsAV, labels)
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| predScore = predScore[:,1].detach().cpu().numpy()
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| predScores.extend(predScore)
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| evalLines = open(evalOrig).read().splitlines()[1:]
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| labels = []
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| labels = pandas.Series( ['SPEAKING_AUDIBLE' for line in evalLines])
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| scores = pandas.Series(predScores)
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| evalRes = pandas.read_csv(evalOrig)
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| evalRes['score'] = scores
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| evalRes['label'] = labels
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| evalRes.drop(['label_id'], axis=1,inplace=True)
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| evalRes.drop(['instance_id'], axis=1,inplace=True)
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| evalRes.to_csv(evalCsvSave, index=False)
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| cmd = "python -O utils/get_ava_active_speaker_performance.py -g %s -p %s "%(evalOrig, evalCsvSave)
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| mAP = float(str(subprocess.run(cmd, shell=True, capture_output =True).stdout).split(' ')[2][:5])
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| return mAP
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|
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| def saveParameters(self, path):
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| torch.save(self.state_dict(), path)
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|
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| def loadParameters(self, path):
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| selfState = self.state_dict()
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| loadedState = torch.load(path)
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| for name, param in loadedState.items():
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| origName = name;
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| if name not in selfState:
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| name = name.replace("module.", "")
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| if name not in selfState:
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| print("%s is not in the model."%origName)
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| continue
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| if selfState[name].size() != loadedState[origName].size():
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| sys.stderr.write("Wrong parameter length: %s, model: %s, loaded: %s"%(origName, selfState[name].size(), loadedState[origName].size()))
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| continue
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| selfState[name].copy_(param)
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|
|