Esempio n. 1
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    def __getitem__(self, idx):

        idx1, idx2, idx3 = self.triplets[idx]
        img1, lab1 = self.data[idx1]
        img2, lab2 = self.data[idx2]
        img3, lab3 = self.data[idx3]

        img1 = np.array(img1)
        img2 = np.array(img2)
        img3 = np.array(img3)

        img1 = utility.to_channels(img1, self.num_channels)
        img2 = utility.to_channels(img2, self.num_channels)
        img3 = utility.to_channels(img3, self.num_channels)

        lab1 = utility.to_one_hot(lab1, self.numclass)
        lab2 = utility.to_one_hot(lab2, self.numclass)
        lab3 = utility.to_one_hot(lab3, self.numclass)

        a = ObjectImageAndLabelTransform(img1, lab1)
        b = ObjectImageAndLabelTransform(img2, lab2)
        c = ObjectImageAndLabelTransform(img3, lab3)
        if self.transform is not None:
            a = self.transform(a)
            b = self.transform(b)
            c = self.transform(c)

        return {'a': a.to_dict(), 'b': b.to_dict(), 'c': c.to_dict()}
    def __getitem__(self, idx):   

        image, label = self.data[idx]
        image = np.array(image) 
        image = utility.to_channels(image, self.num_channels)        
        label = utility.to_one_hot(label, self.numclass)

        obj = ObjectImageAndLabelTransform( image, label )
        if self.transform: 
            sample = self.transform( obj )
        return obj.to_dict()
    def __getitem__(self, idx):

        # read image
        image, label = self.data[(idx) % len(self.data)]
        image = utility.to_channels(image, self.num_channels)

        # read background
        if self.bbackimage:
            idxk = random.randint(1, len(self.databack) - 1)
            back = self.databack[idxk]  #(idx)%len(self.databack)
            back = F.resize_image(back,
                                  640,
                                  1024,
                                  resize_mode='crop',
                                  interpolate_mode=cv2.INTER_LINEAR)
            back = utility.to_channels(back, self.num_channels)
        else:
            back = np.ones((640, 1024, 3), dtype=np.uint8) * 255

        if self.generate == 'image':
            obj = ObjectImageTransform(image)

        elif self.generate == 'image_and_label':
            _, image, _ = self.ren.generate(image, back)
            image = utility.to_gray(image.astype(np.uint8))
            image_t = utility.to_channels(image, self.num_channels)
            image_t = image_t.astype(np.uint8)
            label = utility.to_one_hot(int(label), self.data.numclass)
            obj = ObjectImageAndLabelTransform(image_t, label)

        elif self.generate == 'image_and_mask':
            _, image, mask = self.ren.generate(image, back)
            image = utility.to_gray(image.astype(np.uint8))
            image_t = utility.to_channels(image, self.num_channels)
            image_t = image_t.astype(np.uint8)
            #print( image_t.shape, image_t.min(), image_t.max(), flush=True )
            #assert(False)
            mask = mask[:, :, 0]
            mask_t = np.zeros((mask.shape[0], mask.shape[1], 2))
            mask_t[:, :, 0] = (mask == 0).astype(np.uint8)  # backgraund
            mask_t[:, :, 1] = (mask == 1).astype(np.uint8)
            obj = ObjectImageAndMaskMetadataTransform(image_t, mask_t,
                                                      np.array([label]))

        else:
            assert (False)

        if self.transform:
            obj = self.transform(obj)

        return obj.to_dict()
Esempio n. 4
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    def __getitem__(self, idx):

        idx = idx % len(self.data)
        image, label = self.data[idx]
        image = np.array(image)
        image = utility.to_channels(image, self.num_channels)
        label = utility.to_one_hot(label,
                                   self.numclass)  #no one-hot haixuanguo

        # parse image and label to tensor
        obj = ObjectImageAndLabelTransform(image, label)
        # transform data
        if self.transform:
            obj = self.transform(obj)
        return obj.to_dict()
Esempio n. 5
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    def __getitem__(self, idx):

        idx = idx % self.numclass
        class_index = self.labels_index[idx]
        n = len(class_index)
        idx = class_index[random.randint(0, n - 1)]
        image, label = self.data[idx]

        image = np.array(image)
        image = utility.to_channels(image, self.num_channels)
        label = utility.to_one_hot(label, self.numclass)

        obj = ObjectImageAndLabelTransform(image, label)
        if self.transform:
            obj = self.transform(obj)
        return obj.to_dict()
Esempio n. 6
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    def __getitem__(self, idx):

        # read image 
        image, label = self.data[ (idx)%len(self.data)  ]
        #A,A_inv = F.compute_norm_mat( image.shape[1], image.shape[0] )
        #image = F.equalization(image,A,A_inv)
        image = utility.to_channels(image, self.num_channels)
        
        # read background 
        if self.bbackimage:
            idxk = random.randint(1, len(self.databack) - 1 )
            back = self.databack[ idxk  ] 
            back = F.resize_image(back, 640, 1024, resize_mode='crop', interpolate_mode=cv2.INTER_LINEAR);
            back = utility.to_channels(back, self.num_channels)
        else:
            back = np.ones( (640,1024,3), dtype=np.uint8 )*255
       
        if self.generate == 'image':
            obj = ObjectImageTransform( image )
            
        elif self.generate == 'image_and_label':
            
            _, image_ilu, _, _ = self.ren.generate( image, back )
            #image_ilu, _, _, _ = self.ren.generate( image, back )
            image_ilu = utility.to_gray( image_ilu.astype(np.uint8) )
            image_ilu = utility.to_channels(image_ilu, self.num_channels )
            image_ilu = image_ilu.astype(np.uint8)
            label = utility.to_one_hot( int(label), self.data.numclass )
            obj = ObjectImageAndLabelTransform( image_ilu, label )
            
            if self.transform_image:
                obj = self.transform_image( obj )
                
            return  obj.to_dict()
            
            
            
        elif self.generate == 'image_and_mask':                           
            
            image_org, image_ilu, mask, h = self.ren.generate( image, back )  
                        
            image_org = utility.to_gray( image_org.astype(np.uint8)  )
            image_org = utility.to_channels(image_org, self.num_channels)
            image_org = image_org.astype(np.uint8)
            
            image_ilu = utility.to_gray( image_ilu.astype(np.uint8)  )
            image_ilu = utility.to_channels(image_ilu, self.num_channels)
            image_ilu = image_ilu.astype(np.uint8) 
                               
            mask = mask[:,:,0]
            mask_t = np.zeros( (mask.shape[0], mask.shape[1], 2) )
            mask_t[:,:,0] = (mask == 0).astype( np.uint8 ) # 0-backgraund
            mask_t[:,:,1] = (mask == 1).astype( np.uint8 )
                        
            obj_image = ObjectImageTransform( image_org.copy()  )
            obj_data = ObjectImageAndMaskMetadataTransform( image_ilu.copy(), mask_t, np.concatenate( ( [label], h),axis=0 ) ) #np.array([label])
                        
        else: 
            assert(False)         

        if self.transform_image: 
            obj_image = self.transform_image( obj_image ) 

        if self.transform_data: 
            obj_data = self.transform_data( obj_data )
            
        x_img, y_mask, y_lab = obj_data.to_value()
        x_org = obj_image.to_value()
        
        return x_org, x_img, y_mask, y_lab