Hybrid Convolutional Neural Network with Domain adaptation for Sketch based Image Retrieval
Author(s):
Article Type:
Research/Original Article (دارای رتبه معتبر)
Abstract:
Background and Objectives
Freehand sketching is an easy-to-use but effective instrument for computer-human connection. Sketches are highly abstract to the domain gap, that exists between the intended sketch and real image. In addition to appearance information, it is believed that shape information is also very efficient in sketch recognition and retrieval. Methods
In the realm of machine vision, comprehending Freehand Sketches has grown more crucial due to the widespread use of touchscreen devices. In addition to appearance information, it is believed that shape information is also very efficient in sketch recognition and retrieval. The majority of sketch recognition and retrieval methods utilize appearance information-based tactics. A hybrid network architecture comprising two networks—S-Net (Sketch Network) and A-Net (Appearance Network)—is shown in this article under the heading of hybrid convolution. These subnetworks, in turn, describe appearance and shape information. Conversely, a module known as the Conventional Correlation Analysis (CCA) technique module is utilized to match the range and enhance the sketch retrieval performance to decrease the range gap distance. Finally, sketch retrieval using the hybrid Convolutional Neural Network (CNN) and CCA domain adaptation module is tested using many datasets, including Sketchy, Tu-Berlin, and Flickr-15k. The final experimental results demonstrated that compared to more sophisticated methods, the hybrid CNN and CCA module produced high accuracy and results.Results
The proposed method has been evaluated in the two fields of image classification and Sketch Based Image Retrieval (SBIR). The proposed hybrid convolution works better than other basic networks. It achieves a classification score of 84.44% for the TU-Berlin dataset and 82.76% for the sketchy dataset. Additionally, in SBIR, the proposed method stands out among methods based on deep learning, outperforming non-deep methods by a significant margin. Conclusion
This research presented the hybrid convolutional framework, which is based on deep learning for pattern recognition. Compared to the best available methods, hybrid network convolution has increased recognition and retrieval accuracy by around 5%. It is an efficient and thorough method which demonstrated valid results in Sketch-based image classification and retrieval on TU-Berlin, Flickr 15k, and sketchy datasets.Keywords:
Language:
English
Published:
Journal of Electrical and Computer Engineering Innovations, Volume:12 Issue: 2, Summer-Autumn 2024
Pages:
497 to 510
https://www.magiran.com/p2747944
سامانه نویسندگان
مقالات دیگری از این نویسنده (گان)
-
Segmentation of Brain Tumors from Magnetic Resonance Imaging with k-means Clustering Morphological Local and Global Intensity Fitting
M. Kazemi, H. Farsi *, S. Mohamadzadeh, A. Barati
International Journal of Engineering, Feb 2026 -
Advanced Race Classification Using Transfer Learning and Attention: Real-Time Metrics, Error Analysis, and Visualization in a Lightweight Deep Learning Model
M. Rohani, H. Farsi, S. Mohamadzadeh *
Journal of Electrical and Computer Engineering Innovations, Summer-Autumn 2025