In underwater range-gated imaging (URGI), enhancement of low-brightness and low-contrast images is critical for human observation. Traditional histogram equalizations over-enhance images, with the result of details being lost. To compress over-enhancement, a lower-upper-threshold correlation method is proposed for underwater range-gated imaging self-adaptive enhancement based on double-plateau histogram equalization. The lower threshold determines image details and compresses over-enhancement. It is correlated with the upper threshold. First, the upper threshold is updated by searching for the local maximum in real time, and then the lower threshold is calculated by the upper threshold and the number of nonzero units selected from a filtered histogram. With this method, the backgrounds of underwater images are constrained with enhanced details. Finally, the proof experiments are performed. Peak signal-to-noise-ratio, variance, contrast, and human visual properties are used to evaluate the objective quality of the global and regions of interest images. The evaluation results demonstrate that the proposed method adaptively selects the proper upper and lower thresholds under different conditions. The proposed method contributes to URGI with effective image enhancement for human eyes.

Download full-text PDF

Source
http://dx.doi.org/10.1364/AO.55.008248DOI Listing

Publication Analysis

Top Keywords

underwater range-gated
12
range-gated imaging
12
upper threshold
12
lower-upper-threshold correlation
8
imaging self-adaptive
8
self-adaptive enhancement
8
lower threshold
8
proposed method
8
threshold
5
underwater
4

Similar Publications

Article Synopsis
  • Laser range-gated underwater imaging improves image contrast and detection range by minimizing backscattering noise, but its effectiveness is limited in low reflectivity and turbid water environments.
  • The paper suggests enhancing this technology by incorporating underwater polarized light imaging, which can distinguish between backscattered and reflected light based on polarization differences.
  • Experimental results show that the polarization-enhanced system can increase image quality by up to 47%, widening its potential applications in areas like deep-sea exploration and military uses.
View Article and Find Full Text PDF

Imaging through the scattering medium, such as fog, is important for military and civilian applications. However, the fog concentration restricts the current defogging methods; the image will be seriously degraded in dense fog scenes. Here, an imaging technique by developing joint active polarization defogging and denoising optimization methods based on range-gated detection is proposed for the target in fog conditions.

View Article and Find Full Text PDF

3D gated range-intensity correlation imaging (GRICI) can reconstruct a 3D scene with high range resolution in real time. However, in the applications of underwater range-gated imaging, targets with low reflectivity or at a far distance typically have a low signal-to-noise ratio (SNR), especially in turbid water. Usually, a global threshold is set to suppress noise in gated images, which easily results in data holes in the degraded depth map reconstructed by 3D GRICI.

View Article and Find Full Text PDF

This paper is concerned with the mitigation of backscatter effects in a single gated image. A range-intensity-profile prior dehazing method is proposed to estimate scene depth and finely remove water backscatter at different depths for underwater range-gated imaging. It is based on the prior that the target intensity is distributed with range intensity profiles in gated images.

View Article and Find Full Text PDF

We investigate a systematic improvement for 3D range-gated imaging in scattering environments. Drawbacks including absorption, ambient light, and scattering effect are studied. The former two are compensated through parameter estimation and preprocessing.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!