Пример #1
0
def visQnImgAtt():
    print('Running qn Visuals')
    config = Attention_LapConfig(load=True, args=args)
    reader = AttModelInputProcessor(config.testAnnotFile,
                                 config.rawQnValTestFile,
                                 config.valImgFile, 
                                 config,
                                 is_training=False)
    
    #reader = AttModelInputProcessor(config.trainAnnotFile, 
    #                             config.rawQnTrain, 
    #                             config.trainImgFile, 
    #                             config,
    #                             is_training=False)
    
    model = QnAttentionModel(config)
    
    saveData = True
    
    model.loadTrainedModel(config.restoreQuAttSigmoidModel, 
                           config.restoreQuAttSigmoidModelPath)
    
    #model.loadTrainedModel(config.restoreQnImAttModel, 
    #                       config.restoreQnImAttModelPath)
    qnAlphas, alphas, img_ids, qns, preds, topk, labs = model.runPredict(
        reader, config.csvResults, 200, mini=True, chooseBatch=30)
    model.destruct()
    
    out = OutputGenerator(config.valImgPaths)
    #out = OutputGenerator(config.trainImgPaths)
    #out.displayQnImgAttention(qnAlphas, alphas, img_ids, qns, preds, topk, labs,saveData)
    out.displayQnImgAttSaveSplit(qnAlphas, alphas, img_ids, qns, preds, topk, labs,saveData)
Пример #2
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def solve():
    print('Running solve')
    config = Attention_LapConfig(load=True, args=args)
    out = OutputGenerator(config.trainImgPaths)
    #img_id = raw_input('Img_id--> ')
    img_id = str(262415)
    img = Image.open(out.convertIDtoPath(str(img_id)))
    img.show()
    
    qn = raw_input('Question--> ')
    print(qn)
    model = ImageAttentionModel(config)
    model.loadTrainedModel(config.restoreModel, config.restoreModelPath) 
    alpha, pred = model.solve(qn, img_id)
    out.displaySingleOutput(alpha, img_id, qn, pred)
    
    ''' -a otest -r ./results/Att21Mar1334/att21Mar1334.meta -p ./results/Att21Mar1334/
Пример #3
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def solveqn():
    print('Running solve')
    config = Attention_LapConfig(load=True, args=args)
    out = OutputGenerator(config.valImgPaths)
    #img_id = raw_input('Img_id--> ')
    img_id = str(337826) #214587
    img = Image.open(out.convertIDtoPath(str(img_id)))
    img.show()
    model = QnAttentionModel(config)
    model.loadTrainedModel(config.restoreQnImAttModel, 
                           config.restoreQnImAttModelPath)
    processor = OnlineProcessor(config.valImgFile, config)
    
    for i in range(5):
        qn = raw_input('Question--> ')
        print(qn)
        qnalpha, alpha, pred = model.solve(qn, img_id, processor)
        out.displaySingleOutput(alpha, img_id, qn, pred)
Пример #4
0
def runVisualise():
    print('Running Visuals')
    config = Attention_LapConfig(load=True, args=args)
    reader = AttModelInputProcessor(config.trainAnnotFile, 
                                 config.rawQnTrain, 
                                 config.trainImgFile, 
                                 config,
                                 is_training=False)
    
    model = ImageAttentionModel(config)
    model.loadTrainedModel(config.restoreModel, config.restoreModelPath)
    alphas, img_ids, qns, preds = model.runPredict(
        reader, config.csvResults, 5, mini=True)
    model.destruct()
    reader.destruct()
    
    out = OutputGenerator(config.trainImgPaths)
    out.displayOutput(alphas, img_ids, qns, preds)
def runVisualiseVal():
    print('Running Visuals')
    config = Attention_LapConfig(load=True, args=args)
    reader = AttModelInputProcessor(config.testAnnotFile,
                                 config.rawQnValTestFile,
                                 config.valImgFile, 
                                 config,
                                 is_training=False)
    
    model = ImageAttentionModel(config)
    model.loadTrainedModel(config.restoreModel, config.restoreModelPath)
    alphas, img_ids, qns, preds, labels = model.runPredict(
        reader, config.csvResults, 180, mini=True, chooseBatch=0)
    model.destruct()
    reader.destruct()
    
    out = OutputGenerator(config.valImgPaths)
    out.displayEachSample(alphas, img_ids, qns, preds, labels, saveData=True)
def visQnImgAtt():
    print('Running qn Visuals')
    config = Attention_LapConfig(load=True, args=args)
    reader = AttModelInputProcessor(config.testAnnotFile,
                                 config.rawQnValTestFile,
                                 config.valImgFile, 
                                 config,
                                 is_training=False)
    
    model = QnAttentionModel(config)
    model.loadTrainedModel(config.restoreQnImAttModel, 
                           config.restoreQnImAttModelPath)
    qnAlphas, alphas, img_ids, qns, preds, topk = model.runPredict(
        reader, config.csvResults, 5, mini=True)
    model.destruct()
    
    out = OutputGenerator(config.valImgPaths)
    out.displayQnImgAttention(qnAlphas, alphas, img_ids, qns, preds, topk)