DeepScale: An Online Frame Size Adaptation Framework to Accelerate Visual Multi-object Tracking

07/22/2021
by   Keivan Nalaie, et al.
0

In surveillance and search and rescue applications, it is important to perform multi-target tracking (MOT) in real-time on low-end devices. Today's MOT solutions employ deep neural networks, which tend to have high computation complexity. Recognizing the effects of frame sizes on tracking performance, we propose DeepScale, a model agnostic frame size selection approach that operates on top of existing fully convolutional network-based trackers to accelerate tracking throughput. In the training stage, we incorporate detectability scores into a one-shot tracker architecture so that DeepScale can learn representation estimations for different frame sizes in a self-supervised manner. During inference, based on user-controlled parameters, it can find a suitable trade-off between tracking accuracy and speed by adapting frame sizes at run time. Extensive experiments and benchmark tests on MOT datasets demonstrate the effectiveness and flexibility of DeepScale. Compared to a state-of-the-art tracker, DeepScale++, a variant of DeepScale achieves 1.57X accelerated with only moderate degradation (  2.4) in tracking accuracy on the MOT15 dataset in one configuration.

READ FULL TEXT

page 1

page 4

research
01/31/2017

Deep Reinforcement Learning for Visual Object Tracking in Videos

In this paper we introduce a fully end-to-end approach for visual tracki...
research
05/27/2020

AFAT: Adaptive Failure-Aware Tracker for Robust Visual Object Tracking

Siamese approaches have achieved promising performance in visual object ...
research
05/23/2022

Online Hybrid Lightweight Representations Learning: Its Application to Visual Tracking

This paper presents a novel hybrid representation learning framework for...
research
07/29/2018

Joint Representation and Truncated Inference Learning for Correlation Filter based Tracking

Correlation filter (CF) based trackers generally include two modules, i....
research
09/16/2023

Unsupervised Green Object Tracker (GOT) without Offline Pre-training

Supervised trackers trained on labeled data dominate the single object t...
research
11/25/2019

Real-Time Object Tracking via Meta-Learning: Efficient Model Adaptation and One-Shot Channel Pruning

We propose a novel meta-learning framework for real-time object tracking...
research
01/30/2018

Parallel Tracking and Verifying

Being intensively studied, visual object tracking has witnessed great ad...

Please sign up or login with your details

Forgot password? Click here to reset