三目跟踪:小尺度赤眼蜂的多目标跟踪

Vishal Pani, M. Bernet, Vincent Calcagno, L. V. Oudenhove, F. Brémond
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引用次数: 2

摘要

由于赤眼蜂作为生物防治剂的有效性,其行为在全球范围内得到了广泛的研究。然而,据我们所知,赤眼蜂的种内/种间行为领域尚未得到彻底的探索。为了研究这些行为,在实验室设置中长期识别和跟踪赤眼蜂个体是至关重要的。为此,我们提出了一个健壮的跟踪管道,名为TrichTrack。由于标记数据的不可用性,我们使用迭代弱监督方法训练检测器。我们还使用弱监督方法利用噪声轨道采样来训练再识别(ReID)网络。这使我们能够区分与人眼无法区分的赤眼蜂个体。我们还开发了一个两阶段的跟踪模块,过滤掉容易的关联以提高其效率。我们的方法在大多数MOTMetrics上优于现有的昆虫跟踪器,特别是在ID开关和片段上。
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TrichTrack: Multi-Object Tracking of Small-Scale Trichogramma Wasps
Trichogramma wasps behaviors are studied extensively due to their effectiveness as biological control agents across the globe. However, to our knowledge, the field of intra/inter-species Trichogramma behavior is yet to be explored thoroughly. To study these behaviors it is crucial to identify and track Trichogramma individuals over a long period in a lab setup. For this, we propose a robust tracking pipeline named TrichTrack. Due to the unavailability of labeled data, we train our detector using an iterative weakly supervised method. We also use a weakly supervised method to train a Re-Identification (ReID) network by leveraging noisy tracklet sampling. This enables us to distinguish Trichogramma individuals that are indistinguishable from human eyes. We also develop a two-staged tracking module that filters out the easy association to improve its efficiency. Our method outperforms existing insect trackers on most of the MOTMetrics, specifically on ID switches and fragmentations.
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