scholarly journals THE EFFECT OF COLOR SPACE ON MEAN SHIFT OBJECT TRACKING: A COMPARATIVE STUDY

2014 ◽  
Vol 42 (3) ◽  
pp. 756-768
Author(s):  
Ahmed Nabil Mohamed ◽  
Mohamed Moness Ali
2014 ◽  
Vol 42 (1) ◽  
pp. 199-215
Author(s):  
Ahmed Nabil Mohamed ◽  
Mohamed Moness Ali

2021 ◽  
Vol 13 (4) ◽  
pp. 699
Author(s):  
Tingting Zhou ◽  
Haoyang Fu ◽  
Chenglin Sun ◽  
Shenghan Wang

Due to the block of high-rise objects and the influence of the sun’s altitude and azimuth, shadows are inevitably formed in remote sensing images particularly in urban areas, which causes missing information in the shadow region. In this paper, we propose a new method for shadow detection and compensation through objected-based strategy. For shadow detection, the shadow was highlighted by an improved shadow index (ISI) combined color space with an NIR band, then ISI was reconstructed by the objects acquired from the mean-shift algorithm to weaken noise interference and improve integrity. Finally, threshold segmentation was applied to obtain the shadow mask. For shadow compensation, the objects from segmentation were treated as a minimum processing unit. The adjacent objects are likely to have the same ambient light intensity, based on which we put forward a shadow compensation method which always compensates shadow objects with their adjacent non-shadow objects. Furthermore, we presented a dynamic penumbra compensation method (DPCM) to define the penumbra scope and accurately remove the penumbra. Finally, the proposed methods were compared with the stated-of-art shadow indexes, shadow compensation method and penumbra compensation methods. The experiments show that the proposed method can accurately detect shadow from urban high-resolution remote sensing images with a complex background and can effectively compensate the information in the shadow region.


Author(s):  
Muh. Rezki Kurniwan

Pelacakan benda bergerak atau object tracking merupakan suatu proses mengikuti posisi obyek di dalam suatu citra. Algoritma CamShift adalah singkatan dari Continuously Adaptive Meanshift, yang merupakan pengembangan dari algoritma Mean Shift yang dilakukan secara terus menerus (berulang) untuk melakukan adaptasi atau penyesuaian terhadap distribusi probabilitas warna yang selalu berubah tiap pergantian frame dari video. CamShift dapat melacak objek berwarna, dibutuhkan gambar distribusi probabilitas. Gambar-gambar menggunakan sistem warna HSV dan hanya menggunakan komponen Hue untuk membuat histogram warna objek 1D. Histogram ini disimpan untuk mengonversi  frame berikutnya yang cocok dengan probabilitas objek. Gambar distribusi probabilitas itu sendiri dibuat dengan melakukan back projection histogram hue 1D ke image hue pada frame. Hasilnya disebut gambar backproject. CamShift kemudian digunakan untuk melacak objek berdasarkan gambar backproject tersebut. Kata kunci :CamShift.Tracking. Objek


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