2019
DOI: 10.1007/s11042-019-08033-x
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Impact of compressed and down-scaled training images on vehicle detection in remote sensing imagery

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Cited by 38 publications
(17 citation statements)
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“…Preprocessing operations involve noise removal, smoothing, edge detection (18) (9) , slant correction and skew detection (19) , image normalization (20) (5) , thinning (21) (22) or keletonization, and baseline detection (23) (24) . The process of separating (25)(26)(27) and partitioning the images is known as segmentation (28) (29) . Segmentation is the still challenging and complex problem in the field of image processing.…”
Section: Online Image Acquisition 2 Offline Image Acquisitionmentioning
confidence: 99%
“…Preprocessing operations involve noise removal, smoothing, edge detection (18) (9) , slant correction and skew detection (19) , image normalization (20) (5) , thinning (21) (22) or keletonization, and baseline detection (23) (24) . The process of separating (25)(26)(27) and partitioning the images is known as segmentation (28) (29) . Segmentation is the still challenging and complex problem in the field of image processing.…”
Section: Online Image Acquisition 2 Offline Image Acquisitionmentioning
confidence: 99%
“…Compressed and large-scale images are the problems in the dataset to accurately detect objects, this will help to easily detect vehicle and monitor their actives [96]. Poor visual and Low resolution of the satellite image is also an issue in object/vehicle detection, but development advance ML algorithms and model will help to use of Maximally Stable Extremal Regions for vehicle detection in complex situations low lightening conditions or under shadow regions [97,98].…”
Section: Open Research Areasmentioning
confidence: 99%
“…The channel attention mechanism can learn the importance of each feature channel, increase the channel features that are useful for current recognition according to the importance, and suppress the channel features with weak recognition power. This paper introduces the channel attention implementation network SE-net (Squeeze-andexcitation network) to the BN-inception [18]. The SE-BN-Inception module is obtained to calibrate the information of different channels and enhance the expression ability of video features.…”
Section: Se-bn-inception Modulementioning
confidence: 99%