Deep learning with computer vision is increasingly moving in a direction of temporal data, where video frames and their labels are stored as sequences, rather than independent images. Models trained on this data directly account for the temporal information content, rather than making predictions frame-by-frame and then fusing them with non-deep-learning techniques.
data_dir
|_train
|_MOT16_N (Folder with sequence N)
|_det
|_gt (Folder with ground truth annotations)
|_img1 (Folder with images the sequence)
|_00000n.jpg (image of n-th frame in sequence)
|_MOT16_M
....
|_test (same structure as _train)
The annotations in gt.txt have the format below, and the last 4 items (conf->z) are not used in the Deep Lake dataset:
frame, id, bb_left, bb_top, bb_width, bb_height, conf, x, y, z
Now we're ready to create a Deep Lake Dataset in the./mot_2016_train folder by running:
import deeplakeimport osimport pandas as pdimport numpy as npfrom PIL import Image, ImageDrawds = deeplake.empty('./mot_2015_train')# Create the dataset locally
Next, let's write code to inspect the folder structure for the downloaded dataset and create a list of folders containing the sequences:
dataset_folder ='/MOT16/train'sequences = [ item for item in os.listdir(dataset_folder)if os.path.isdir(os.path.join(dataset_folder, item)) ]
Finally, let's create the tensors by using the sequence[...]htype, iterate through each sequence, and iterate through each frame within the sequence, one-by-one.
Data is appended to sequence[...] htypes using lists. The list contains the whole sample, and the individual elements of the list are the individual data points, such as the image frame, the bounding boxes in a particular frame, etc.
See end of code block below.
with ds:# Define tensors ds.create_tensor('frames', htype ='sequence[image]', sample_compression ='jpg') ds.create_tensor('boxes', htype ='sequence[bbox]') ds.create_tensor('ids', htype ='sequence[]', dtype ='uint32')# Ids are not uploaded as htype = 'class_labels' because they don't contain information about the class of an object. ds.boxes.info.update(coords = {'type': 'pixel', 'mode': 'LTWH'})# Bounding box format is left, top, width, height# Iterate through each sequencefor sequence in sequences:# Define root directory for that sequence root_local = os.path.join(dataset_folder,sequence, 'img1')# Get a list of all the image paths img_paths = [os.path.join(root_local, item)for item insorted(os.listdir(root_local))]# Read the annotations and convert to dataframewithopen(os.path.join(dataset_folder,sequence, 'gt', 'gt.txt'))as f: anns = [line.rstrip('\n')for line in f] anns_df = pd.read_csv(os.path.join(dataset_folder, sequence, 'gt', 'gt.txt'), header =None)# Get the frames from the annotations and make sure they're of equal length as the images frames = pd.unique(anns_df[0])assertlen(frames)==len(img_paths)# Iterate through each frame and add data to sequence boxes_seq = [] ids_seq = []for frame in frames: ann_df = anns_df[anns_df[0]== frame]# Find annotations in the specific frame boxes_seq.append(ann_df.loc[:, [2, 3, 4, 5]].to_numpy().astype('float32'))# Box coordinates are in the 3rd-6th column ids_seq.append(ann_df.loc[:, 1].to_numpy().astype('uint32'))# ids are in the second column# Append the sequences to the deeplake dataset ds.append({"frames": [deeplake.read(path) for path in img_paths],"boxes": boxes_seq,"ids": ids_seq})
This dataset identifies objects by id, where each id represents an instance of an object. However, the id does not identify the class of the object, such person, car, truck, etc. Therefore, the ids were not uploaded as htype = "class_label".
Inspect the Deep Lake Dataset
Let's check out the 10th frame in the 6th sequence in this dataset. A complete visualization of this dataset is available in Activeloop Platform.
# Draw bounding boxes for the 10th frame in the 6th sequenceseq_ind =5frame_ind =9img = Image.fromarray(ds.frames[seq_ind][frame_ind].numpy())draw = ImageDraw.Draw(img)(w,h) = img.sizeboxes = ds.boxes[seq_ind][frame_ind].numpy()for b inrange(boxes.shape[0]): (x1,y1) = (int(boxes[b][0]),int(boxes[b][1])) (x2,y2) = (int(boxes[b][0]+boxes[b][2]),int(boxes[b][1]+boxes[b][3])) draw.rectangle([x1,y1,x2,y2], width=2, outline ='red')
# Display the frame and its bounding boxesimg
Congrats! You just created a dataset using sequences! 🎉