TY - JOUR ID - 4027 TI - A New Method for Detecting Ships in Low Size and Low Contrast Marine Images: Using Deep Stacked Extreme Learning Machines JO - AUT Journal of Electrical Engineering JA - EEJ LA - en SN - 2588-2910 AU - SHOJAEDINI, VAHHAB AU - Moshtaghi, Mehrdad AU - Abedi, MohamadReza AD - IROST AD - Department of Electrical, Biomedical and Mechatronics Engineering, Qazvin Branch, Islamic Azad University, Qazvin, Iran. AD - Department of Electrical, Biomedical and Mechatronics Engineering, Qazvin Branch, Islamic Azad University, Qazvin, Iran Y1 - 2020 PY - 2020 VL - 52 IS - 2 SP - 159 EP - 168 KW - Ship Detection KW - Marine Images KW - Deep Neural Network KW - Deep Stacked Extreme Learning Machine KW - Decorrelation DO - 10.22060/eej.2020.18037.5341 N2 - Detecting ships in marine images is an essential problem in maritime surveillance systems. In recent years deep neural networks have been utilized as a tool having high potential to overcome the challenges of this application. Unfortunately the performance of such networks greatly drops when they are exposed to low size and low contrast optical images which have been captured by ground, aerial and satellite based systems. On the other hand, image clutters (e.g. sea waves, cloud and wave sequences caused by the floats) may exacerbate this problem. In this paper a new method is proposed to improve the performance of deep neural networks in detecting ships in low size and low contrast marine images which has been based on the concept of deep stacked extreme learning machines. In proposed method the extracted features have more generality in modeling of marine images based on superposition of dedicated mapping functions of extreme learning machines. Furthermore they have the minimal overlap thanks to performing decorrelation process on features which are propagated between network layers. The performance of the proposed method is evaluated on several marine images which have been captured in sunny, rainy and hazy conditions. The obtained results are compared with some other state-of-the-art detection methods by using standard parameters. Increased F-measure of the proposed method (i.e. 3.5 percent compared to its closest alternative) in parallel with its better accuracy, recall and precision shows its effectiveness in detecting ships in low size and low contrast marine images. UR - https://eej.aut.ac.ir/article_4027.html L1 - https://eej.aut.ac.ir/article_4027_714abf35d2647e186989e8806bcc3ed0.pdf ER -