KHALID, CAVALLARO, RINNER: DETECTING TRACKING ERRORS VIA FORECASTING 1 Detecting tracking errors via forecasting
نویسندگان
چکیده
We propose a tracker-independent framework to determine time instants when a video tracker fails. The framework is divided into two steps. First, we determine tracking quality by comparing the distributions of the tracker state and a region around the state. We generate the distributions using Distribution Fields and compute a tracking quality score by comparing the distributions using the L1 distance. Then, we model this score as a time series and employ the Auto Regressive Moving Average method to forecast future values of the quality score. A difference between the original and forecast returns an error signal that we use to detect a tracker failure. We validate the proposed approach over different datasets and demonstrate its flexibility with tracking results and sequences from the Visual Object Tracking (VOT) challenge.
منابع مشابه
Detecting tracking errors via forecasting
We propose a framework that detects the failures of a tracker using its output only (Figure 1). The framework is based on a state-background discrimination approach that generates a track quality score, which quantifies the ability of the tracker to remain on target. We define a background region around the target and split it into four sub-regions, each with the same size as the state. We then...
متن کاملAutomatic Detection and Correction of Multi-class Classification Errors Using System Whole-part Relationships
Real-world dynamic systems such as physical and atmosphereocean systems often exhibit a hierarchical system-subsystem structure. However, the paradigm of making this hierarchical/modular structure and the rich properties they encode a “first-class citizen” of machine learning algorithms is largely absent from the literature. Furthermore, traditional data mining approaches focus on designing new...
متن کاملComprehensive Memory Error Protection via Diversity and Taint-Tracking
of the Dissertation Comprehensive Memory Error Protection via Diversity and Taint-Tracking by Lorenzo Cavallaro Doctor of Philosophy in Computer Science Università degli Studi di Milano 2007 Memory errors in C and C++ programs are one of the oldest classes of vulnerabilities. Attackers have been exploiting these errors since late 80’s and these issues are still a real and concrete threat. To da...
متن کاملEvent Detection and Localization Using Sensor Networks
Although sensor network research was initially driven by military applications such as enemy tracking and surveillance in battle field, they have been deployed in several civilian and commercial applications such as habitat monitoring, environmental observations and forecasting, health monitoring etc. In this paper, we study and propose algorithms for detecting fire and localizing the same usin...
متن کاملEffect of Curved Path Monopulse Radar Platform’s Grazing Angle on Height of Floated Targets Detection
Monopulse radarsare one of the most accurate tracking radars used to guide various platforms. Detection and tracking of surface targets with these radars are performed in order to point strike targets. Sea clutter presents challenges for detecting floated targets and in addition to affecting detection height, it can cause errors in monopulse angle finding. In this paper, the airborne monopulse ...
متن کامل