2021
DOI: 10.3390/rs13132643
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Collision Avoidance on Unmanned Aerial Vehicles Using Neural Network Pipelines and Flow Clustering Techniques

Abstract: Unmanned Autonomous Vehicles (UAV), while not a recent invention, have recently acquired a prominent position in many industries, and they are increasingly used not only by avid customers, but also in high-demand technical use-cases, and will have a significant societal effect in the coming years. However, the use of UAVs is fraught with significant safety threats, such as collisions with dynamic obstacles (other UAVs, birds, or randomly thrown objects). This research focuses on a safety problem that is often … Show more

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Cited by 18 publications
(7 citation statements)
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“…To avoid collisions involving a moving object, such as a tossed ball, [60] proposes an approach that employs Neural Network Pipeline (NNP) to forecast crashes and an Object Trajectory Estimation (OTE) technique that leverages optical flow. The biggest issue in related research is the drone's poor speed.…”
Section: B Uavs Collision Avoidance Algorithmsmentioning
confidence: 99%
“…To avoid collisions involving a moving object, such as a tossed ball, [60] proposes an approach that employs Neural Network Pipeline (NNP) to forecast crashes and an Object Trajectory Estimation (OTE) technique that leverages optical flow. The biggest issue in related research is the drone's poor speed.…”
Section: B Uavs Collision Avoidance Algorithmsmentioning
confidence: 99%
“…The FCM clustering method was employed for determining the cluster, rules are generated for the FIS via expert assessment, and alternate UAV techniques were prioritized. Pedro et al [16] proposed a safety problem i.e., frequently overlooked because of a lack of solutions and technology to resolve it: collision with non-stationary object. A technique is determined that uses DL technique to resolve the computational problem of real-world collision avoidance with dynamic objects through offthe-shelf commercial vision sensor.…”
Section: Related Workmentioning
confidence: 99%
“…First, the sigmoid layer decides which input value (i t ) should be updated given, as in (8), then the tanh layer creates a vector of new candidate values (c t ) given, as in (9). At forget gate, ConvLSTM decides which information (f t ) should be forgotten from the cell states, as in (10). Based on the update at the input and forget gate, the old cell state c t−1 updates cell state (c t ) given, as in (11).…”
Section: Recurrent Networkmentioning
confidence: 99%
“…Such predictive cognitive neural networks are often considered the essence of computer vision. They play a critical role in a variety of applications, such as abnormal event detection [1], autonomous driving [2][3][4], intention prediction in robotics [5,6], video coding [7,8], collision avoidance systems [9,10], activity and event prediction [11,12], and pedestrian and traffic prediction [13][14][15]. However, modeling future image content and object motion is challenging due to dynamic evolution and image complexity, such as occlusions, camera movements, and illumination.…”
Section: Introductionmentioning
confidence: 99%