Abstract
In the recent years, there has been a high surge in the use of convolutional neural networks (CNNs) because of the state-of-the art performance in a number of areas like text, audio and video processing. The field of remote sensing applications is however a field that has not fully incorporated the use of CNN. To address this issue, we introduced a novel CNN that can be used to increase the performance of detectors built that use Local Binary Patterns (LBP) and Histogram of Oriented Gradients (HOG). Moreover, in this paper, we have also increased the accuracy of the CNN using two improvements. The first improvement involves feature vector transformation with Euler methodology and combining normalized and raw features. Based on the results observed, we have also performed a comparative study using similar methods and it has been identified that the proposed CNN proves to be an improvement over the others.
References
- Zhang, Q., Wang, Y., Liu, Q., Liu, X., & Wang, W. (2016, July). CNN based suburban building detection using monocular high resolution Google Earth images. In 2016 IEEE International Geoscience and Remote Sensing Symposium (IGARSS) (pp. 661-664). IEEE.
- Sun, L., Tang, Y., & Zhang, L. (2017). Rural building detection in high-resolution imagery based on a two-stage CNN model. IEEE Geoscience and Remote Sensing Letters, 14(11), 1998-2002.
- Alidoost, F., & Arefi, H. (2018). A CNN-based approach for automatic building detection and recognition of roof types using a single aerial image. PFG–Journal of Photogrammetry, Remote Sensing and Geoinformation Science, 86(5), 235-248.
- Shirley, D. R. A., Janeera, D. A., Padmini, J. J., Banu, S. M. A., & Abirami, T. (2018). MODELLING AND ANALYSIS OF MODIFIED BAUGH-WOOLEY MULTIPLIER USING GATE DIFFUSION INPUT AND IMPROVED SHANNON ADDER. International Journal of Pure and Applied Mathematics, 118(22), 773-777.
- Chen, C., Gong, W., Hu, Y., Chen, Y., & Ding, Y. (2017). Learning oriented region-based convolutional neural networks for building detection in satellite remote sensing images. The International Archives of Photogrammetry, Remote Sensing and Spatial Information Sciences, 42, 461.
- Sungheetha, A., & Sharma, R. (2020). A Novel CapsNet based Image Reconstruction and Regression Analysis. Journal of Innovative Image Processing (JIIP), 2(03), 156-164.
- Vakalopoulou, M., Karantzalos, K., Komodakis, N., & Paragios, N. (2015, July). Building detection in very high resolution multispectral data with deep learning features. In 2015 IEEE International Geoscience and Remote Sensing Symposium (IGARSS) (pp. 1873-1876). IEEE.
- Chen, C., Gong, W., Chen, Y., & Li, W. (2019). Learning a two-stage CNN model for multi-sized building detection in remote sensing images. Remote Sensing Letters, 10(2), 103-110.
- Hamaguchi, R., & Hikosaka, S. (2018). Building detection from satellite imagery using ensemble of size-specific detectors. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition Workshops (pp. 187-191).
- Han, Q., Yin, Q., Zheng, X., & Chen, Z. (2021). Remote sensing image building detection method based on Mask R-CNN. Complex & Intelligent Systems, 1-9.
- Zhou, Z., & Gong, J. (2018). Automated residential building detection from airborne LiDAR data with deep neural networks. Advanced Engineering Informatics, 36, 229-241.
- Smys, S., Basar, A., & Wang, H. (2020). CNN based Flood Management System with IoT Sensors and Cloud Data. Journal of Artificial Intelligence, 2(04), 194-200.
- Vijayakumar, T. (2019). Neural network analysis for tumor investigation and cancer prediction. Journal of Electronics, 1(02), 89-98.
