Geehi Walls Trail is a 1.6 km Easy 4WD trail in Khancoban, Victoria, Australia. Expect max gradient up to 4%. Average drive time is 4 minutes.
You'll find the Geehi Walls Trail offers a perfect introduction to off-roading in Victoria's rugged Alpine region. This short but scenic route near Khancoban showcases dramatic rock formations and native bushland without demanding advanced driving skills—making it ideal for newcomers to 4WD exploration or those seeking a quick, rewarding drive. The trail's moderate 4% grade ensures you'll experience genuine off-road conditions while maintaining accessibility for standard 4WD vehicles.
The driving experience balances simplicity with genuine adventure. You'll navigate naturally formed tracks winding through eucalyptus woodland, with the impressive Geehi Walls rock formations providing stunning visual rewards. The compact 1.6 km length means you can complete this trail in just four minutes of driving time, though most explorers linger longer to appreciate the scenery and take photographs. The terrain is well-defined with minimal obstacles, allowing you to focus on enjoying the landscape rather than wrestling with technical challenges.
Before heading out, standard 4WD preparation applies: ensure your vehicle is in good mechanical condition, carry water and basic supplies, and check weather conditions—Victoria's Alpine weather can change rapidly. The track is accessible year-round but may present slippery conditions after rain. With six successful vehicle traversals already logged on the Newtracs app, you'll benefit from real-world route tracking data.
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1.6 km
Distance
4 min
Avg Time
32 km/h
Avg Speed
4%
Steep Grade
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13°C
Partly Cloudy
6 km/h E
54%
12°C
0
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