DeepSperm: A robust and real-time bull sperm-cell detection in densely populated semen videos

03/03/2020
by   Priyanto Hidayatullah, et al.
0

Background and Objective: Object detection is a primary research interest in computer vision. Sperm-cell detection in a densely populated bull semen microscopic observation video presents challenges such as partial occlusion, vast number of objects in a single video frame, tiny size of the object, artifacts, low contrast, and blurry objects because of the rapid movement of the sperm cells. This study proposes an architecture, called DeepSperm, that solves the aforementioned challenges and is more accurate and faster than state-of-the-art architectures. Methods: In the proposed architecture, we use only one detection layer, which is specific for small object detection. For handling overfitting and increasing accuracy, we set a higher network resolution, use a dropout layer, and perform data augmentation on hue, saturation, and exposure. Several hyper-parameters are tuned to achieve better performance. We compare our proposed method with those of a conventional image processing-based object-detection method, you only look once (YOLOv3), and mask region-based convolutional neural network (Mask R-CNN). Results: In our experiment, we achieve 86.91 mAP on the test dataset and a processing speed of 50.3 fps. In comparison with YOLOv3, we achieve an increase of 16.66 mAP point, 3.26 x faster on testing, and 1.4 x faster on training with a small training dataset, which contains 40 video frames. The weights file size was also reduced significantly, with 16.94 x smaller than that of YOLOv3. Moreover, it requires 1.3 x less graphical processing unit (GPU) memory than YOLOv3. Conclusions: This study proposes DeepSperm, which is a simple, effective, and efficient architecture with its hyper-parameters and configuration to detect bull sperm cells robustly in real time. In our experiment, we surpass the state of the art in terms of accuracy, speed, and resource needs.

READ FULL TEXT

page 7

page 11

page 13

page 14

page 15

page 18

research
11/14/2018

YOLO-LITE: A Real-Time Object Detection Algorithm Optimized for Non-GPU Computers

This paper focuses on YOLO-LITE, a real-time object detection model deve...
research
04/10/2017

ClusterNet: Detecting Small Objects in Large Scenes by Exploiting Spatio-Temporal Information

Object detection in wide area motion imagery (WAMI) has drawn the attent...
research
09/05/2018

Pack and Detect: Fast Object Detection in Videos Using Region-of-Interest Packing

Object detection in videos is an important task in computer vision for v...
research
11/02/2022

Object Detection and Classification Algorithms using Deep Learning for Video Surveillance Applications

Object Classification is a principle task in image and video processin...
research
08/27/2021

Densely-Populated Traffic Detection using YOLOv5 and Non-Maximum Suppression Ensembling

Vehicular object detection is the heart of any intelligent traffic syste...
research
05/17/2023

Real-Time Flying Object Detection with YOLOv8

This paper presents a generalized model for real-time detection of flyin...
research
06/05/2019

Corn leaf detection using Region based convolutional neural network

The field of machine learning has become an increasingly budding area of...

Please sign up or login with your details

Forgot password? Click here to reset