การจำแนกภาพความสัมพันธ์ของแอ็คชันด้วยวิธีการโครงข่ายประสาทเทียมแบบสังวัตนาการ-ซัพพอร์ตเวกเตอร์แมชชีน
Keywords:
image classification, action relationships, image processing, classification of action relationshipsAbstract
Image retrieval is an active problem in the digital image processing field. A large number of new techniques and systems have researcher involved and attempted to improve the problems. Therefore, we survey the theoretical and empirical contributions in the current decade related to content base image retrieval, keyword annotation, and automatic image retrieval process. The retrieval process of such keyword based approaches is done by keyword searching model. The model is rather rudimentary and it does not specific enough for representing the actual image retrieval. This paper presents a new approach to represent the interactions between object and action. The interaction relationships are including implied-by, type-of and mutually exclusive. The approach is composed of four main phases: (1) Keyword Annotation (2) Define Relationships (3) Relationship Predictions (4) Measurement and Evaluation. We train and test our model on a large scale image dataset of relationship actions. The experimental results indicate that our proposed approach offers significant performance improvements in the classification of relationship actions with maximum success rate of 74.4% in Data Set II.
Downloads
Published
Issue
Section
License
*Copyright
The article has been published in Kasem Bundit Engineering Journal (KBEJ) is the copyright of the Kasem Bundit University. Do not bring all of the messages or republished except permission from the university.
* Responsibility
If the article is published as an article that infringes the copyright or has the wrong content the author of article must be responsible.