SUPERPIXELS BASED REGION LABEL ANNOTATION ON NATURAL SCENE IMAGES

TRISNA GELAR ABDILLAH

Informasi Dasar

36 kali
17.05.184
646.407 2
Karya Ilmiah - Thesis (S2) - Reference

Region Label Annotation is an approach to predict the relation between semantic concepts and objects within an image automatically. In this research, a combination of contextual cueing based topological position and neighborhood relationship probability is presented for 7 classes (sky, vegetation, snow, water, ground, street, and sand) of objects. The proposed method consists of two operations namely Superpixel Level Training and Image Level Annotation Testing. Superpixel Level Training began with building a new ground truth from each of training images. These ground truth originated from superimposing polygon annotation to superpixel. The aims of training process were to generate a classifier model which was produced from a total of 61 color and texture features from each superpixel on training images. The latter operation had two steps, superpixel level annotation and label refining contextual cueing. Superpixel level annotation was a method to classify the label from each of superpixel on the testing image. Meanwhile, Contextual cueing was used to refine the imprecise labeling from the earlier method. Two performance evaluations of the proposed method were conducted using LabelMe dataset. The first evaluation was performed to evaluate the system on the superpixel level, promisingly the method could handle small or insufficient regions classes namely, sand and snow about 80.08% and 74.21% respectively. The second experiment was performed to evaluate the system on an image level, resulting in prediction accuracy for two, three and four associated labels for test image by 85.1%, 75.8%, and 74.9% respectively.

Subjek

PATTERN RECOGNITION
 

Katalog

SUPERPIXELS BASED REGION LABEL ANNOTATION ON NATURAL SCENE IMAGES
 
 
Inggris

Sirkulasi

Rp. 0
Rp. 0
Tidak

Pengarang

TRISNA GELAR ABDILLAH
Perorangan
HERTOG NUGROHO
 

Penerbit

Universitas Telkom
Bandung
2017

Koleksi

Kompetensi

  • IF6906 - TESIS A
  • CSH6Q3 - TOPIK KHUSUS DALAM PENGENALAN POLA
  • CSG6G3 - TOPIK KHUSUS DALAM PENGOLAHAN CITRA

Download / Flippingbook

 

Ulasan

Belum ada ulasan yang diberikan
anda harus sign-in untuk memberikan ulasan ke katalog ini