The package is made as a solution when using video inputs in Machine Learning models. As extracting and storing frames in .JPEG
/.PNG
files will quickly increase the memory requirements and more importantly the number of inodes
, the package provides a convenient alternative. Video frames are stored as blobs at database file .db
which can be read as quickly as the .JPEG
files but without the additional large memory requirements.
Currently supported video formats include .mp4
,mpeg-4
,.avi
,.wmv
. If you have a different extension, you can simply change the script to include them (in the dataset2database/jpgs2singlefile.py
)
The three required packages are opencv
for image/frame loading, numpy
for array manipulation and tqdm
for verbose. Make sure that all packages installed before running any functions.
Multiprocessing: The code uses multiprocessing for improving speeds, thus the total time required for the conversion varies across different processors. The code has been tested on an AMD Threadripper 2950X with an average conversion time of 48 minutes for ~500K videos.
The package assumes a fixed dataset structure such as:
<dataset>
│
└──<class 1>
│ │
│ │─── <video_data_1.mp4>
│ │─── <video_data_2.mp4>
│ │─── ...
│ ...
│
└───<class 2>
│ │
│ │─── <video_data_1.mp4>
│ │─── <video_data_2.mp4>
│ │─── ...
... ...
The main code is at the jpgs2single.py
file. To run the convertor simply call the convert
function with the base directory of the dataset and the destination directory for where to save the generated databases.
from dataset2database import convert
#or
from jpgs2singlefile import convert
convert(my_dataset_dir, my_target_dir)
! Please not that you need to use a "/" for Unix-based systems or a "//" for Windows-based systems alongside your my_dataset_dir
.
Video frames are stored in frames.db
files with their video name and frame number as their ObjID
and the frames array are stored as blobs
. The name format is basically <video_name>/frame _ [frame number in 5-digit format]
File viewer: If you want to ensure that everything has been converted correctly, you can use SQLiteStudio which provides an easy to use multi-platform interface (available for Windows, Mac and Ubuntu).
Loading the database can easily be done with an SQL SELECT
command based on a list of all frames with specified ObjId
s. Then, with the help of np.fromstring()
and cv2.imdecode()
functions the images can be again converted to uint8
arrays.
An example of data loading in python can be found below:
import sqlite3
import cv2
import numpy as np
con = sqlite3.connect('my_video_database.db')
cur = con.cursor()
# retrieve entire video from database (frames are unordered)
frame_names = ["{}/{}".format(my_path.split('/')[-1],'frame_%05d'%(index+1)) for index in frame_indices]
sql = "SELECT Objid, frames FROM Images WHERE ObjId IN ({seq})".format(seq=','.join(['?']*len(frame_names)))
row = cur.execute(sql,frame_names)
ids = []
frames = []
i = 0
row = row.fetchall()
# Video order re-arangement
for ObjId, item in row:
#--- Decode blob
nparr = np.fromstring(item, np.uint8)
img = cv2.imdecode(nparr, cv2.IMREAD_COLOR)
ids.append(ObjId)
frames.append(img)
i+=1
# Ensuring correct order of frames
frames = [frame for _, frame in sorted(zip(ids,frames), key=lambda pair: pair[0])]
# (if required) array conversion [frames x height x width x channels]
frames = np.asarray(frames)
cur.close()
con.close()
Please make sure, Git is installed in your machine:
$ sudo apt-get update
$ sudo apt-get install git
$ git clone https://github.com/alexandrosstergiou/dataset2database.git
$ cd dataset2database
$ pip install .
You can then use it as any other package installed through pip.
The latest stable release is also available for download through pip
$ pip install dataset2database