Automatic Samples Selection Using Histogram of Oriented Gradients (HOG) Feature Distance for Tsunami Victims Detection

Journal Title: EMITTER International Journal of Engineering Technology - Year 2017, Vol 5, Issue 2

Abstract

Finding victims at a disaster site is the primary goal of Search-and-Rescue (SAR) operations. Many technologies created from research for searching disaster victims through aerial imaging. but, most of them are difficult to detect victims at tsunami disaster sites with victims and backgrounds which are look similar. This research collects post-tsunami aerial imaging data from the internet to builds dataset and model for detecting tsunami disaster victims. Datasets are built based on distance differences from features every sample using Histogram-of-Oriented-Gradient (HOG) method. We use the longest distance to collect samples from photo to generate victim and non-victim samples. We claim steps to collect samples by measuring HOG feature distance from all samples. the longest distance between samples will take as a candidate to build the dataset, then classify victim (positives) and non-victim (negatives) samples manually. The dataset of tsunami disaster victims was re-analyzed using cross-validation Leave-One-Out (LOO) with Support-Vector-Machine (SVM) method. The experimental results show the performance of two test photos with 74.36% precision, 81.60% accuracy, 61.70% recall and f-measure 67.44% to distinguish victim (positives) and non-victim (negatives).

Authors and Affiliations

Inzar Salfikar, Indra Adji Sulistijono, Achmad Basuki

Keywords

Related Articles

Centronit: Initial Centroid Designation Algorithm for K-Means Clustering

Clustering performance of the K-means highly depends on the correctness of initial centroids. Usually initial centroids for the K- means clustering are determined randomly so that the determined initial centers may cause...

Secure Ubiquitous Sensor Network based on Elliptic Curve MenezesQu Vanstoneas Status Data Supply of EnvironmentinDisaster Management

Along with the many environmental changes, it enables a disaster either natural or man-made objects. One of the efforts made to prevent disasters from happening is to make a system that is able to provide information abo...

Dimensionality Reduction Algorithms on High Dimensional Datasets

Classification problem especially for high dimensional datasets have attracted many researchers in order to find efficient approaches to address them. However, the classification problem has become very complicatedespeci...

Development of Healthcare Kiosk for Checking Heart Health

The main problem encountered nowadays in the health field, especially in health care is the growing number of population and the decreasing health facilities. In this regard, healthcare kiosk is used as an alternative to...

Hybrid Modeling KMeans – Genetic Algorithms in the Health Care Data

K-Means is one of the major algorithms widely used in clustering due to its good computational performance. However, K-Means is very sensitive to the initially selected points which randomly selected, and therefore it do...

Download PDF file
  • EP ID EP314015
  • DOI 10.24003/emitter.v5i2.182
  • Views 92
  • Downloads 0

How To Cite

Inzar Salfikar, Indra Adji Sulistijono, Achmad Basuki (2017). Automatic Samples Selection Using Histogram of Oriented Gradients (HOG) Feature Distance for Tsunami Victims Detection. EMITTER International Journal of Engineering Technology, 5(2), 234-254. https://europub.co.uk/articles/-A-314015